library(dreamerr)
library(tidyverse)
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The function clean_data will be created to clean the files, and it will be applied in the second chunk of the code, in which we will import the files.
clean_data <- function(ticker) {
##In this function, we're going to first convert the Date column to date:
ticker$Date <- as.Date(ticker$Date, '%m/%d/%Y')
## Then, we want to restrict it from 2000 onwards
new_ticker <- filter(ticker, format(ticker$Date, '%Y') >= 2000)
##We need all days to contain the same number ofminutes, so we will use the left_join command first ensure that, and also to create NA for all MINUTES for which certain stocks do not have data.
minute_list <- sort(unique(new_ticker$Time))
day_list <- sort(unique(new_ticker$Date))
minute_df <- data.frame('Time' = minute_list) ##A minute df is needed for the left_join() to be applied
day_df <- data.frame('Date' = day_list) ##A day df is needed for the left_join() to be applied
day_minute_df <- left_join(day_df, minute_df, character()) ##A df is created in which all 390 possible minutes were joined into each possible day
new_ticker <- left_join(day_minute_df, new_ticker, by = c('Time', 'Date')) ##Then we left join all the informations in the new ticker into the day_minute df, uniformising all dates for all stocks in number of minutes
new_ticker$minute_return <- (new_ticker$Close - lag(new_ticker$Close))/ new_ticker$Close ##Return taken on levels: p_t - p_{t-1} / p_{t-1}
new_ticker$minute_log_return <- log(new_ticker$Close) - log(lag(new_ticker$Close)) ##Log return: log(p_t) - log(p_{t-1})
return(new_ticker)
}
Given the clean_data() function above, we will now jointly import and clean the data (alternatively, we could have importer everything, then created the cleaning function and then have applied it, using three different chunks).
files_list <- list.files('Data')
stock_name <- str_remove(files_list, ".txt")
stock_list <- vector(mode = "list", length = 29) ##Initialize the stock list.
for (i in 1:length(stock_list)) {
stock_df <- data.frame(read_csv(paste('Data/',files_list[i], sep = ""), col_types = cols()))
clean_stock_df <- clean_data(stock_df)
stock_list[[i]] <- clean_stock_df[,]
}
names(stock_list) <- stock_name
A function to compute daily variables of interest will be created, and in a following code it will be applied to our list of stocks. These variables of interest are the realized volatility, sum of daily minute returns and sum of daily volumes traded per minute:
#First for AXP, to understand the logic
#AXP %>% group_by(Date) %>% summarise(daily=sum(minute_log_return,na.rm=T), RV = sum(minute_log_return^2, na.rm = T), VOL = sum(Volume, na.rm = T), log_RV = log(sum(minute_log_return^2, na.rm = T)) ) ##This works as intended, just creates our daily dataframe. Therefore
##This logic will be turned into a function that creates daily dataframes for all of the tickers
make_daily_data <- function(clean_ticker){
daily_ticker <- clean_ticker %>% group_by(Date) %>% summarise(daily=sum(minute_log_return,na.rm=T), RV = sum(minute_log_return^2, na.rm = T), VOL = sum(Volume, na.rm = T), log_RV = log(sum(minute_log_return^2, na.rm = T)) )
#return(daily_ticker)
}
Now, we apply this function for all tickers, just like before.
daily_stock_list <- vector(mode = 'list', length = 29) ##Initialize the daily stock list.
for (i in 1:length(stock_list)) {
daily_stock_df <- make_daily_data(stock_list[[i]])
daily_stock_list[[i]] <- daily_stock_df[,]
}
names(daily_stock_list) <- stock_name
As suggested, we should try creating one giant dataframe in order to use facet_wrap and plot everything at once.
complete_daily_df <- bind_rows(daily_stock_list, .id = "column_label")
##I just want the name to be Stock:
names(complete_daily_df)[names(complete_daily_df)== 'column_label'] <- 'Stock'
Rolling Window Estimations
full_data <- VariableCreation(df = complete_daily_df) ##We use this function to create the desired variables.
complete_ML_set <- RollingWindow(full_data)
[1] 1
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6511 alpha= 19.9939 beta= 18.6538
[1] 2
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6814 alpha= 19.9832 beta= 18.646
[1] 3
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5216 alpha= 19.9496 beta= 18.6485
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7453 alpha= 19.8567 beta= 18.7159
[1] 5
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5925 alpha= 19.7481 beta= 18.7949
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6003 alpha= 19.762 beta= 18.8592
[1] 7
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7661 alpha= 19.8449 beta= 18.8384
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5868 alpha= 19.763 beta= 18.8415
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6944 alpha= 19.9439 beta= 18.8006
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6086 alpha= 20.0063 beta= 18.7952
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4578 alpha= 19.8619 beta= 18.7805
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6093 alpha= 19.9955 beta= 18.7726
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.62 alpha= 20.0015 beta= 18.7735
[1] 14
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4551 alpha= 19.933 beta= 18.7755
[1] 15
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.3956 alpha= 19.9636 beta= 18.7649
[1] 16
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4639 alpha= 19.8664 beta= 18.744
[1] 17
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4244 alpha= 19.8608 beta= 18.7474
[1] 18
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.678 alpha= 19.9378 beta= 18.7501
[1] 19
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6335 alpha= 19.9513 beta= 18.7519
[1] 20
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6342 alpha= 19.9192 beta= 18.7339
[1] 21
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4126 alpha= 19.8503 beta= 18.7438
[1] 22
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4174 alpha= 19.8884 beta= 18.7365
[1] 23
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6571 alpha= 19.9872 beta= 18.7299
[1] 24
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4192 alpha= 19.8583 beta= 18.7604
[1] 25
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6418 alpha= 20.0458 beta= 18.7534
[1] 26
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.329 alpha= 20.0907 beta= 18.6617
[1] 27
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.506 alpha= 19.8022 beta= 18.5685
[1] 28
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5399 alpha= 19.821 beta= 18.5685
[1] 29
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.581 alpha= 19.8396 beta= 18.5721
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.66 alpha= 19.8634 beta= 18.5683
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5508 alpha= 19.8406 beta= 18.5474
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5694 alpha= 19.8753 beta= 18.5481
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5471 alpha= 19.8693 beta= 18.5371
[1] 34
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.927 alpha= 19.9403 beta= 18.5257
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5804 alpha= 19.7966 beta= 18.5312
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.726 alpha= 19.7266 beta= 18.4941
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7397 alpha= 19.7137 beta= 18.4871
[1] 38
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.9284 alpha= 19.6664 beta= 18.4562
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7756 alpha= 19.6123 beta= 18.4747
[1] 40
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7716 alpha= 19.6105 beta= 18.4742
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.9363 alpha= 19.6782 beta= 18.4823
[1] 42
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.8191 alpha= 19.6444 beta= 18.4753
[1] 43
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7725 alpha= 19.5828 beta= 18.4988
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.9069 alpha= 19.656 beta= 18.6315
[1] 45
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.858 alpha= 19.6966 beta= 18.6356
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.9612 alpha= 19.5908 beta= 18.6506
[1] 47
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0933 alpha= 19.2608 beta= 18.6305
[1] 48
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1243 alpha= 18.9689 beta= 18.5457
[1] 49
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1457 alpha= 19.0236 beta= 18.5435
[1] 50
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.024 alpha= 19.0431 beta= 18.5488
[1] 51
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0174 alpha= 18.9432 beta= 18.5494
[1] 52
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.9762 alpha= 19.0892 beta= 18.6313
[1] 53
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2323 alpha= 19.1781 beta= 18.647
[1] 54
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2146 alpha= 19.1516 beta= 18.6366
[1] 55
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0983 alpha= 18.9415 beta= 18.6613
[1] 56
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3672 alpha= 18.7614 beta= 18.703
[1] 57
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2645 alpha= 18.8155 beta= 18.6918
[1] 58
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3707 alpha= 18.8176 beta= 18.7004
[1] 59
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2736 alpha= 18.8049 beta= 18.6945
[1] 60
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4299 alpha= 18.8268 beta= 18.7296
[1] 61
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4097 alpha= 18.8281 beta= 18.7232
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.361 alpha= 18.7951 beta= 18.7296
[1] 63
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.483 alpha= 18.7657 beta= 18.7425
[1] 64
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.383 alpha= 18.7632 beta= 18.7397
[1] 65
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.493 alpha= 18.7665 beta= 18.7357
[1] 66
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4878 alpha= 18.7691 beta= 18.7101
[1] 67
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5148 alpha= 18.6921 beta= 18.7251
[1] 68
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5196 alpha= 18.6693 beta= 18.72
[1] 69
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5514 alpha= 18.6621 beta= 18.7315
[1] 70
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5199 alpha= 18.632 beta= 18.7364
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Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5217 alpha= 18.6326 beta= 18.6724
[1] 72
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4611 alpha= 18.6326 beta= 18.6666
[1] 73
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5408 alpha= 18.6431 beta= 18.6667
[1] 74
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4326 alpha= 18.6314 beta= 18.6445
[1] 75
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4247 alpha= 18.6463 beta= 18.6402
[1] 76
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3987 alpha= 18.6272 beta= 18.6395
[1] 77
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4493 alpha= 18.6624 beta= 18.6394
[1] 78
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5088 alpha= 18.6483 beta= 18.6211
[1] 79
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5125 alpha= 18.6133 beta= 18.6564
[1] 80
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4481 alpha= 18.69 beta= 18.6042
[1] 81
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5173 alpha= 18.6426 beta= 18.6171
[1] 82
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5527 alpha= 18.6304 beta= 18.6164
[1] 83
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5563 alpha= 18.6267 beta= 18.6156
[1] 84
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5619 alpha= 18.6296 beta= 18.599
[1] 85
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5518 alpha= 18.6508 beta= 18.6606
[1] 86
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5691 alpha= 18.5663 beta= 18.6364
[1] 87
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6166 alpha= 18.442 beta= 18.6948
[1] 88
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5999 alpha= 18.4749 beta= 18.6859
[1] 89
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4719 alpha= 18.5249 beta= 18.7215
[1] 90
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5157 alpha= 18.607 beta= 18.6674
[1] 91
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5015 alpha= 18.5631 beta= 18.6631
[1] 92
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3994 alpha= 18.5383 beta= 18.6626
[1] 93
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3665 alpha= 18.5684 beta= 18.6453
[1] 94
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3106 alpha= 18.8545 beta= 18.5353
[1] 95
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1579 alpha= 18.8397 beta= 18.534
[1] 96
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1636 alpha= 18.8742 beta= 18.524
[1] 97
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3255 alpha= 18.7642 beta= 18.5057
[1] 98
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0579 alpha= 18.7779 beta= 18.4766
[1] 99
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1513 alpha= 18.8385 beta= 18.4568
[1] 100
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8038 alpha= 18.9458 beta= 18.4194
[1] 101
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1865 alpha= 18.9063 beta= 18.437
[1] 102
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.8225 alpha= 18.9498 beta= 18.4385
[1] 103
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.755 alpha= 18.8907 beta= 18.434
[1] 104
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8037 alpha= 18.9061 beta= 18.4337
[1] 105
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.86 alpha= 18.8612 beta= 18.4643
[1] 106
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.745 alpha= 19.0204 beta= 18.6227
[1] 107
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8622 alpha= 18.9131 beta= 18.615
[1] 108
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7972 alpha= 18.9736 beta= 18.6165
[1] 109
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7826 alpha= 18.9892 beta= 18.6141
[1] 110
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.811 alpha= 19.0156 beta= 18.6298
[1] 111
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9087 alpha= 18.9852 beta= 18.6249
[1] 112
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6195 alpha= 19.0306 beta= 18.6448
[1] 113
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6062 alpha= 19.0204 beta= 18.6679
[1] 114
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0348 alpha= 18.9892 beta= 18.6663
[1] 115
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5406 alpha= 19.2055 beta= 18.831
[1] 116
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8555 alpha= 18.9686 beta= 18.8138
[1] 117
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4655 alpha= 19.1493 beta= 18.8007
[1] 118
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6171 alpha= 18.9905 beta= 18.8347
[1] 119
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6298 alpha= 19.0085 beta= 18.8313
[1] 120
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0326 alpha= 19.0655 beta= 18.8267
[1] 121
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5862 alpha= 19.0237 beta= 18.9097
[1] 122
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4967 alpha= 19.0622 beta= 18.9316
[1] 123
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9977 alpha= 19.0957 beta= 18.932
[1] 124
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7011 alpha= 18.9089 beta= 19.0407
[1] 125
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.8252 alpha= 18.7758 beta= 19.077
[1] 126
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0374 alpha= 18.7269 beta= 19.1261
[1] 127
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0563 alpha= 18.7016 beta= 19.1664
[1] 128
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1088 alpha= 18.6642 beta= 19.1754
[1] 129
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0663 alpha= 18.6058 beta= 19.1782
[1] 130
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0468 alpha= 18.3078 beta= 19.2405
[1] 131
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1732 alpha= 18.4864 beta= 19.3651
[1] 132
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.204 alpha= 18.5532 beta= 19.3549
[1] 133
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2069 alpha= 18.5919 beta= 19.4154
[1] 134
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2549 alpha= 18.5019 beta= 19.3905
[1] 135
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2312 alpha= 18.5218 beta= 19.4183
[1] 136
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2453 alpha= 18.5466 beta= 19.3733
[1] 137
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2289 alpha= 18.5382 beta= 19.3684
[1] 138
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5581 alpha= 18.465 beta= 19.3987
[1] 139
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2075 alpha= 18.4492 beta= 19.3863
[1] 140
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4035 alpha= 18.4852 beta= 19.3589
[1] 141
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.499 alpha= 18.3285 beta= 19.4014
[1] 142
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5165 alpha= 18.2269 beta= 19.431
[1] 143
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6276 alpha= 18.0903 beta= 19.5514
[1] 144
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.584 alpha= 17.9421 beta= 19.7037
[1] 145
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6666 alpha= 17.978 beta= 19.7027
[1] 146
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5743 alpha= 18.1073 beta= 20.2306
[1] 147
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4646 alpha= 18.268 beta= 20.1198
[1] 148
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3468 alpha= 18.2786 beta= 20.1171
[1] 149
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1757 alpha= 18.2273 beta= 20.1362
[1] 150
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1897 alpha= 18.3007 beta= 20.2266
[1] 151
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2698 alpha= 18.5111 beta= 20.3139
[1] 152
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5706 alpha= 18.28 beta= 20.729
[1] 153
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.3672 alpha= 18.3243 beta= 20.7209
[1] 154
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3776 alpha= 18.4952 beta= 20.7957
[1] 155
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3586 alpha= 18.4971 beta= 20.7965
[1] 156
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3141 alpha= 18.5249 beta= 20.7985
[1] 157
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3501 alpha= 18.5555 beta= 20.7998
[1] 158
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1036 alpha= 18.6424 beta= 20.8111
[1] 159
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0932 alpha= 18.6665 beta= 20.8173
[1] 160
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.3519 alpha= 18.5422 beta= 20.8954
[1] 161
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2179 alpha= 18.6594 beta= 20.8594
[1] 162
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1209 alpha= 18.6134 beta= 20.9173
[1] 163
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2341 alpha= 18.612 beta= 20.8943
[1] 164
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1636 alpha= 18.5457 beta= 20.9629
[1] 165
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.532 alpha= 18.3904 beta= 20.9423
[1] 166
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.3758 alpha= 18.4601 beta= 20.9404
[1] 167
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4423 alpha= 18.5589 beta= 20.8635
[1] 168
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1571 alpha= 18.5676 beta= 20.8563
[1] 169
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2259 alpha= 18.6258 beta= 20.8516
[1] 170
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2264 alpha= 18.6783 beta= 20.914
[1] 171
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3384 alpha= 18.6411 beta= 20.9873
[1] 172
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3475 alpha= 18.489 beta= 21.0416
[1] 173
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3499 alpha= 18.4847 beta= 21.0465
[1] 174
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1969 alpha= 18.6317 beta= 20.9409
[1] 175
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1347 alpha= 18.8819 beta= 20.9798
[1] 176
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.8481 alpha= 18.8869 beta= 20.9983
[1] 177
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4591 alpha= 19.0117 beta= 21.0276
[1] 178
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9094 alpha= 18.9567 beta= 20.9593
[1] 179
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7938 alpha= 18.9156 beta= 20.9104
[1] 180
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2766 alpha= 19.1657 beta= 20.93
[1] 181
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0031 alpha= 19.1446 beta= 21.0128
[1] 182
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0324 alpha= 19.1413 beta= 21.0133
[1] 183
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8848 alpha= 19.0983 beta= 21.0089
[1] 184
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8826 alpha= 19.2048 beta= 21.0268
[1] 185
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0097 alpha= 19.2016 beta= 21.0199
[1] 186
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5175 alpha= 19.3788 beta= 21.02
[1] 187
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8263 alpha= 19.344 beta= 21.0986
[1] 188
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6285 alpha= 19.4289 beta= 21.0698
[1] 189
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8354 alpha= 19.3127 beta= 21.0837
[1] 190
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9315 alpha= 19.3081 beta= 21.1164
[1] 191
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9668 alpha= 19.272 beta= 21.1263
[1] 192
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.005 alpha= 19.2915 beta= 21.1456
[1] 193
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8599 alpha= 19.1998 beta= 21.1389
[1] 194
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9902 alpha= 19.2606 beta= 21.2259
[1] 195
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8846 alpha= 19.2568 beta= 21.0869
[1] 196
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6694 alpha= 19.4449 beta= 21.2228
[1] 197
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.043 alpha= 19.4111 beta= 21.2825
[1] 198
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4089 alpha= 19.5726 beta= 21.224
[1] 199
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6532 alpha= 19.763 beta= 21.1671
[1] 200
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8138 alpha= 19.9246 beta= 21.2044
[1] 201
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5194 alpha= 19.797 beta= 21.1848
[1] 202
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9754 alpha= 19.8633 beta= 21.1567
[1] 203
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6185 alpha= 19.9799 beta= 21.2019
[1] 204
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6992 alpha= 20.3542 beta= 21.3022
[1] 205
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7391 alpha= 20.3804 beta= 21.2909
[1] 206
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3677 alpha= 20.5743 beta= 21.3617
[1] 207
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4832 alpha= 20.4269 beta= 21.4285
[1] 208
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.49 alpha= 20.7886 beta= 21.4009
[1] 209
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4002 alpha= 20.9877 beta= 21.5504
[1] 210
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3773 alpha= 21.1174 beta= 21.6836
[1] 211
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.382 alpha= 21.0752 beta= 21.7083
[1] 212
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3901 alpha= 21.008 beta= 21.7106
[1] 213
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4136 alpha= 20.9746 beta= 21.7118
[1] 214
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4217 alpha= 20.8839 beta= 21.7272
[1] 215
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4239 alpha= 20.8626 beta= 21.725
[1] 216
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3992 alpha= 20.939 beta= 21.7606
[1] 217
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4572 alpha= 20.8666 beta= 21.7564
[1] 218
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5935 alpha= 20.9923 beta= 21.8008
[1] 219
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4352 alpha= 20.9051 beta= 21.8165
[1] 220
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4286 alpha= 20.8914 beta= 21.8142
[1] 221
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4035 alpha= 20.9395 beta= 21.7987
[1] 222
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4172 alpha= 20.9104 beta= 21.8039
[1] 223
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3845 alpha= 20.9539 beta= 21.7604
[1] 224
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3882 alpha= 20.972 beta= 21.8638
[1] 225
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4007 alpha= 20.8777 beta= 21.9063
[1] 226
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4433 alpha= 20.8439 beta= 21.9219
[1] 227
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.431 alpha= 20.8639 beta= 21.9217
[1] 228
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4516 alpha= 20.7377 beta= 21.9201
[1] 229
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4388 alpha= 20.799 beta= 21.8957
[1] 230
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3968 alpha= 20.8645 beta= 21.8613
[1] 231
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4292 alpha= 20.7799 beta= 21.8624
[1] 232
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4518 alpha= 20.7084 beta= 21.8648
[1] 233
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5801 alpha= 20.5315 beta= 22.2271
[1] 234
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6319 alpha= 20.3945 beta= 22.2263
[1] 235
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6863 alpha= 20.3025 beta= 22.2068
[1] 236
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6773 alpha= 20.1191 beta= 22.0809
[1] 237
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6592 alpha= 20.2016 beta= 22.0666
[1] 238
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5952 alpha= 20.3216 beta= 22.0392
[1] 239
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5945 alpha= 20.3953 beta= 22.0542
[1] 240
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5853 alpha= 20.4038 beta= 22.0423
[1] 241
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6064 alpha= 20.4078 beta= 22.0535
[1] 242
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5972 alpha= 20.3873 beta= 22.0544
[1] 243
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5767 alpha= 20.3905 beta= 22.0743
[1] 244
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6068 alpha= 20.3402 beta= 22.0898
[1] 245
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6107 alpha= 20.3661 beta= 22.107
[1] 246
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6077 alpha= 20.4091 beta= 22.1147
[1] 247
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6221 alpha= 20.4429 beta= 22.134
[1] 248
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5723 alpha= 20.4614 beta= 22.0921
[1] 249
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.533 alpha= 20.5752 beta= 22.1213
[1] 250
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5327 alpha= 20.7188 beta= 22.1412
[1] 251
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5102 alpha= 20.7604 beta= 22.1598
[1] 252
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5315 alpha= 20.7243 beta= 22.1797
[1] 253
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7738 alpha= 20.7512 beta= 22.1737
[1] 254
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5844 alpha= 20.718 beta= 22.1727
[1] 255
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5218 alpha= 20.7502 beta= 22.1525
[1] 256
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5156 alpha= 20.7056 beta= 22.11
[1] 257
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4929 alpha= 20.7632 beta= 22.0737
[1] 258
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4983 alpha= 20.7737 beta= 22.0829
[1] 259
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.473 alpha= 20.7466 beta= 22.0973
[1] 260
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4356 alpha= 20.7227 beta= 22.0555
[1] 261
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4984 alpha= 20.6618 beta= 22.0663
[1] 262
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4931 alpha= 20.6546 beta= 22.0716
[1] 263
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5006 alpha= 20.6615 beta= 22.0728
[1] 264
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4812 alpha= 20.7027 beta= 22.0602
[1] 265
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5466 alpha= 20.4907 beta= 21.986
[1] 266
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5217 alpha= 20.5425 beta= 21.9718
[1] 267
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5136 alpha= 20.5933 beta= 22.0345
[1] 268
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5291 alpha= 20.593 beta= 22.0695
[1] 269
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5442 alpha= 20.5779 beta= 22.0469
[1] 270
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5181 alpha= 20.6386 beta= 22.0313
[1] 271
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5075 alpha= 20.6468 beta= 22.0308
[1] 272
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5118 alpha= 20.68 beta= 22.0459
[1] 273
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4621 alpha= 20.8252 beta= 22.078
[1] 274
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4809 alpha= 20.7545 beta= 22.0957
[1] 275
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4892 alpha= 20.7575 beta= 22.0956
[1] 276
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4392 alpha= 20.8685 beta= 22.0849
[1] 277
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4881 alpha= 20.7512 beta= 22.1102
[1] 278
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4515 alpha= 20.8222 beta= 22.1123
[1] 279
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4499 alpha= 20.8435 beta= 22.1251
[1] 280
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4614 alpha= 20.86 beta= 22.125
[1] 281
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4385 alpha= 20.9367 beta= 22.187
[1] 282
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4587 alpha= 20.8861 beta= 22.21
[1] 283
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.426 alpha= 20.9706 beta= 22.2042
[1] 284
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4486 alpha= 20.8903 beta= 22.2347
[1] 285
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4068 alpha= 21.0485 beta= 22.2638
[1] 286
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4047 alpha= 21.0847 beta= 22.2664
[1] 287
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.441 alpha= 21.0201 beta= 22.3224
[1] 288
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4494 alpha= 20.9952 beta= 22.3061
[1] 289
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4547 alpha= 20.9658 beta= 22.2995
[1] 290
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4568 alpha= 20.9478 beta= 22.3036
[1] 291
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5057 alpha= 20.7857 beta= 22.3613
[1] 292
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4738 alpha= 20.8844 beta= 22.3718
[1] 293
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4718 alpha= 20.8835 beta= 22.3618
[1] 294
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4683 alpha= 20.8888 beta= 22.3592
[1] 295
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.471 alpha= 20.9282 beta= 22.3651
[1] 296
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4958 alpha= 20.8664 beta= 22.378
[1] 297
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4488 alpha= 20.9555 beta= 22.3093
[1] 298
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4716 alpha= 20.9085 beta= 22.3531
[1] 299
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4748 alpha= 20.9195 beta= 22.3604
[1] 300
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.455 alpha= 20.9615 beta= 22.364
[1] 301
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4937 alpha= 20.869 beta= 22.4095
[1] 302
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4786 alpha= 20.903 beta= 22.3955
[1] 303
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5113 alpha= 20.7984 beta= 22.4322
[1] 304
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4952 alpha= 20.8628 beta= 22.3899
[1] 305
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5614 alpha= 20.8193 beta= 22.7433
[1] 306
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.492 alpha= 21.017 beta= 22.762
[1] 307
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4909 alpha= 21.0026 beta= 22.7386
[1] 308
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4893 alpha= 21.0109 beta= 22.7376
[1] 309
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4879 alpha= 21.0047 beta= 22.738
[1] 310
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4937 alpha= 21.006 beta= 22.7367
[1] 311
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5016 alpha= 20.9854 beta= 22.6552
[1] 312
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5068 alpha= 20.9781 beta= 22.68
[1] 313
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5137 alpha= 20.972 beta= 22.7401
[1] 314
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5309 alpha= 20.9428 beta= 22.749
[1] 315
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5312 alpha= 20.9418 beta= 22.7476
[1] 316
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5507 alpha= 20.8874 beta= 22.7524
[1] 317
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5446 alpha= 20.9474 beta= 22.7769
[1] 318
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.506 alpha= 20.9972 beta= 22.7012
[1] 319
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5304 alpha= 20.937 beta= 22.7089
[1] 320
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5345 alpha= 20.8956 beta= 22.7396
[1] 321
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5341 alpha= 20.903 beta= 22.7313
[1] 322
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5345 alpha= 20.8903 beta= 22.7334
[1] 323
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5184 alpha= 20.9402 beta= 22.7405
[1] 324
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5048 alpha= 20.9515 beta= 22.7422
[1] 325
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4935 alpha= 20.996 beta= 22.7377
[1] 326
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4912 alpha= 21.0054 beta= 22.7599
[1] 327
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5049 alpha= 20.9848 beta= 22.7722
[1] 328
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.51 alpha= 20.9157 beta= 22.7375
[1] 329
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5141 alpha= 20.9173 beta= 22.7412
[1] 330
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5213 alpha= 20.9044 beta= 22.7421
[1] 331
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5175 alpha= 20.8982 beta= 22.745
[1] 332
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5336 alpha= 20.8417 beta= 22.6986
[1] 333
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5467 alpha= 20.7847 beta= 22.7006
[1] 334
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5341 alpha= 20.8364 beta= 22.7067
[1] 335
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5314 alpha= 20.8392 beta= 22.7079
[1] 336
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5521 alpha= 20.7707 beta= 22.7044
[1] 337
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5015 alpha= 21.1377 beta= 23.0933
[1] 338
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5104 alpha= 21.0576 beta= 23.0856
[1] 339
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5055 alpha= 21.0298 beta= 23.0884
[1] 340
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5388 alpha= 20.9164 beta= 23.0583
[1] 341
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5367 alpha= 20.9077 beta= 23.0569
[1] 342
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5766 alpha= 20.7758 beta= 23.0123
[1] 343
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5795 alpha= 20.7512 beta= 23.0715
[1] 344
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.572 alpha= 20.7617 beta= 23.0702
[1] 345
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5362 alpha= 20.8691 beta= 23.0877
[1] 346
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5753 alpha= 20.8121 beta= 23.0969
[1] 347
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5313 alpha= 20.8513 beta= 23.0931
[1] 348
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5062 alpha= 20.9852 beta= 23.2241
[1] 349
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4962 alpha= 21.012 beta= 23.2234
[1] 350
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5431 alpha= 20.8968 beta= 23.2244
[1] 351
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5546 alpha= 20.8339 beta= 23.2079
[1] 352
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5729 alpha= 20.7449 beta= 23.2209
[1] 353
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.556 alpha= 20.7968 beta= 23.2588
[1] 354
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.574 alpha= 20.761 beta= 23.2631
[1] 355
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5783 alpha= 20.7446 beta= 23.2688
[1] 356
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5655 alpha= 20.7656 beta= 23.2618
[1] 357
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6134 alpha= 20.5693 beta= 23.1885
[1] 358
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5898 alpha= 20.6887 beta= 23.2406
[1] 359
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5003 alpha= 20.83 beta= 23.1822
[1] 360
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5541 alpha= 20.7233 beta= 23.2169
[1] 361
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5544 alpha= 20.7106 beta= 23.2146
[1] 362
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5887 alpha= 20.648 beta= 23.2205
[1] 363
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6065 alpha= 20.6359 beta= 23.2532
[1] 364
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5344 alpha= 20.6873 beta= 22.9539
[1] 365
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6409 alpha= 20.5777 beta= 22.9516
[1] 366
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5813 alpha= 20.6303 beta= 22.9259
[1] 367
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5612 alpha= 20.7275 beta= 22.904
[1] 368
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4662 alpha= 20.8526 beta= 22.9011
[1] 369
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.588 alpha= 20.7472 beta= 22.8637
[1] 370
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5431 alpha= 20.6768 beta= 22.751
[1] 371
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5201 alpha= 20.6532 beta= 22.7395
[1] 372
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5507 alpha= 20.7122 beta= 22.7206
[1] 373
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7956 alpha= 20.7479 beta= 22.7181
[1] 374
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5084 alpha= 20.6335 beta= 22.7331
[1] 375
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6729 alpha= 20.6212 beta= 22.7089
[1] 376
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5601 alpha= 20.5276 beta= 22.6843
[1] 377
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5755 alpha= 20.5127 beta= 22.7033
[1] 378
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6126 alpha= 20.3917 beta= 22.6977
[1] 379
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5696 alpha= 20.4776 beta= 22.6799
[1] 380
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5798 alpha= 20.5089 beta= 22.6769
[1] 381
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5521 alpha= 20.5002 beta= 22.7219
[1] 382
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5614 alpha= 20.525 beta= 22.7673
[1] 383
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5773 alpha= 20.4622 beta= 22.7643
[1] 384
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5935 alpha= 20.4771 beta= 22.7647
[1] 385
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5871 alpha= 20.4689 beta= 22.7623
[1] 386
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5435 alpha= 20.5918 beta= 22.7926
[1] 387
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5308 alpha= 20.6097 beta= 22.7791
[1] 388
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5229 alpha= 20.626 beta= 22.7685
[1] 389
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5514 alpha= 20.5806 beta= 22.7609
[1] 390
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5242 alpha= 20.6079 beta= 22.7638
[1] 391
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5265 alpha= 20.583 beta= 22.7542
[1] 392
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.518 alpha= 20.6346 beta= 22.7447
[1] 393
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4838 alpha= 20.7064 beta= 22.7329
[1] 394
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5272 alpha= 20.6374 beta= 22.75
[1] 395
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5187 alpha= 20.628 beta= 22.7457
[1] 396
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4967 alpha= 20.6984 beta= 22.8189
[1] 397
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5574 alpha= 20.5702 beta= 22.8483
[1] 398
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.595 alpha= 20.4788 beta= 22.849
[1] 399
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5763 alpha= 20.5409 beta= 22.8987
[1] 400
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.508 alpha= 20.5576 beta= 22.9038
[1] 401
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5567 alpha= 20.5373 beta= 22.9038
[1] 402
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5413 alpha= 20.5992 beta= 22.8933
[1] 403
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.469 alpha= 20.7692 beta= 22.9477
[1] 404
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4467 alpha= 20.8432 beta= 22.9193
[1] 405
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4504 alpha= 20.8549 beta= 22.9254
[1] 406
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.464 alpha= 21.0773 beta= 23.3796
[1] 407
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3974 alpha= 21.1961 beta= 23.364
[1] 408
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3808 alpha= 21.2674 beta= 23.365
[1] 409
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3231 alpha= 21.3986 beta= 23.291
[1] 410
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2109 alpha= 20.2094 beta= 20.0076
[1] 411
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2423 alpha= 20.3091 beta= 20.0157
[1] 412
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2839 alpha= 20.2276 beta= 20.0187
[1] 413
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3781 alpha= 19.9807 beta= 20.059
[1] 414
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.449 alpha= 19.7697 beta= 20.122
[1] 415
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4468 alpha= 19.7857 beta= 20.0902
[1] 416
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4392 alpha= 19.78 beta= 20.1291
[1] 417
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4206 alpha= 19.806 beta= 20.1293
[1] 418
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4254 alpha= 19.8087 beta= 20.1236
[1] 419
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4445 alpha= 19.7404 beta= 20.1133
[1] 420
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4408 alpha= 19.7598 beta= 20.1163
[1] 421
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4373 alpha= 19.764 beta= 20.1161
[1] 422
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4441 alpha= 19.7539 beta= 20.1377
[1] 423
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4351 alpha= 19.7631 beta= 20.1644
[1] 424
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4397 alpha= 19.7517 beta= 20.1634
[1] 425
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4551 alpha= 19.6938 beta= 20.1854
[1] 426
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4306 alpha= 19.7724 beta= 20.2071
[1] 427
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.405 alpha= 19.8188 beta= 20.2159
[1] 428
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3714 alpha= 19.8851 beta= 20.1828
[1] 429
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3799 alpha= 19.8879 beta= 20.2034
[1] 430
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.399 alpha= 19.8872 beta= 20.2411
[1] 431
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3953 alpha= 19.8609 beta= 20.2504
[1] 432
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4008 alpha= 19.8327 beta= 20.247
[1] 433
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4022 alpha= 19.8442 beta= 20.2448
[1] 434
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4577 alpha= 19.7413 beta= 20.3292
[1] 435
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3941 alpha= 19.8656 beta= 20.293
[1] 436
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3991 alpha= 19.9081 beta= 20.3003
[1] 437
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3572 alpha= 19.9321 beta= 20.3008
[1] 438
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4059 alpha= 19.8886 beta= 20.3041
[1] 439
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4124 alpha= 19.9106 beta= 20.3058
[1] 440
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3821 alpha= 19.9236 beta= 20.3344
[1] 441
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3565 alpha= 19.9728 beta= 20.3226
[1] 442
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3691 alpha= 19.9554 beta= 20.333
[1] 443
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3514 alpha= 19.9917 beta= 20.3147
[1] 444
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.365 alpha= 19.9681 beta= 20.3145
[1] 445
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3375 alpha= 20.0041 beta= 20.301
[1] 446
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3509 alpha= 20.0087 beta= 20.3424
[1] 447
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3723 alpha= 19.9498 beta= 20.3238
[1] 448
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3381 alpha= 19.9991 beta= 20.3256
[1] 449
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2199 alpha= 20.0004 beta= 20.3081
[1] 450
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2628 alpha= 19.902 beta= 20.3262
[1] 451
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2415 alpha= 19.9281 beta= 20.3271
[1] 452
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2487 alpha= 19.9306 beta= 20.3255
[1] 453
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2183 alpha= 19.9745 beta= 20.3526
[1] 454
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3315 alpha= 19.7436 beta= 20.4503
[1] 455
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3047 alpha= 19.7743 beta= 20.4239
[1] 456
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3596 alpha= 19.7296 beta= 20.5013
[1] 457
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3958 alpha= 19.6169 beta= 20.4844
[1] 458
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4608 alpha= 19.489 beta= 20.5048
[1] 459
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4614 alpha= 19.4929 beta= 20.5107
[1] 460
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4067 alpha= 19.5522 beta= 20.3802
[1] 461
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3882 alpha= 19.5835 beta= 20.3421
[1] 462
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3752 alpha= 19.6221 beta= 20.2954
[1] 463
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3625 alpha= 19.5742 beta= 20.2086
[1] 464
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3394 alpha= 19.5625 beta= 20.2081
[1] 465
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3113 alpha= 19.6246 beta= 20.1801
[1] 466
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2851 alpha= 19.6712 beta= 20.1808
[1] 467
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3031 alpha= 19.7122 beta= 20.1593
[1] 468
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.29 alpha= 19.6777 beta= 20.1847
[1] 469
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2825 alpha= 19.7146 beta= 20.1764
[1] 470
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2723 alpha= 19.7524 beta= 20.2191
[1] 471
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2691 alpha= 19.6996 beta= 20.2248
[1] 472
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2748 alpha= 19.7368 beta= 20.223
[1] 473
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2573 alpha= 19.7758 beta= 20.2238
[1] 474
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2533 alpha= 19.7745 beta= 20.2234
[1] 475
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.207 alpha= 19.9706 beta= 20.4371
[1] 476
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2049 alpha= 19.9973 beta= 20.3974
[1] 477
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2194 alpha= 19.9481 beta= 20.4456
[1] 478
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2143 alpha= 19.9777 beta= 20.4585
[1] 479
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1965 alpha= 19.9895 beta= 20.455
[1] 480
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2641 alpha= 19.8542 beta= 20.5279
[1] 481
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3008 alpha= 19.8224 beta= 20.5272
[1] 482
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3025 alpha= 19.8402 beta= 20.5103
[1] 483
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2814 alpha= 19.8577 beta= 20.4503
[1] 484
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2805 alpha= 19.8416 beta= 20.4513
[1] 485
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3022 alpha= 19.7875 beta= 20.4448
[1] 486
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2498 alpha= 19.8508 beta= 20.4444
[1] 487
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2531 alpha= 19.8803 beta= 20.346
[1] 488
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1658 alpha= 20.0568 beta= 20.1711
[1] 489
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1592 alpha= 20.0141 beta= 20.1303
[1] 490
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1784 alpha= 20.0513 beta= 20.1394
[1] 491
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1778 alpha= 19.9762 beta= 20.13
[1] 492
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2031 alpha= 19.8986 beta= 20.0572
[1] 493
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1592 alpha= 19.9358 beta= 20.0595
[1] 494
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1682 alpha= 19.9416 beta= 20.0465
[1] 495
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1615 alpha= 19.9168 beta= 20.0302
[1] 496
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1444 alpha= 19.9399 beta= 20.0318
[1] 497
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.132 alpha= 19.9871 beta= 20.0516
[1] 498
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0226 alpha= 20.1187 beta= 20.0188
[1] 499
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2691 alpha= 19.8066 beta= 20.1728
[1] 500
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2567 alpha= 19.9496 beta= 20.1755
[1] 501
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2876 alpha= 19.8821 beta= 20.4068
[1] 502
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2304 alpha= 19.9605 beta= 20.4022
[1] 503
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4966 alpha= 19.9678 beta= 20.4088
[1] 504
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.117 alpha= 20.0208 beta= 20.4002
[1] 505
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2894 alpha= 19.9003 beta= 20.3982
[1] 506
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3636 alpha= 19.7254 beta= 20.4245
[1] 507
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4248 alpha= 19.7876 beta= 20.4603
[1] 508
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3347 alpha= 19.7887 beta= 20.4625
[1] 509
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3762 alpha= 19.7076 beta= 20.4734
[1] 510
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2001 alpha= 19.8153 beta= 20.4652
[1] 511
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3305 alpha= 19.6132 beta= 20.4146
[1] 512
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4172 alpha= 19.5775 beta= 20.425
[1] 513
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3529 alpha= 19.5334 beta= 20.431
[1] 514
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5229 alpha= 19.4851 beta= 20.4364
[1] 515
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.511 alpha= 19.3417 beta= 20.46
[1] 516
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0296 alpha= 19.446 beta= 20.426
[1] 517
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4834 alpha= 19.431 beta= 20.4184
[1] 518
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4906 alpha= 19.4418 beta= 20.4183
[1] 519
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5028 alpha= 19.4389 beta= 20.3995
[1] 520
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7062 alpha= 19.5508 beta= 20.2968
[1] 521
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5013 alpha= 19.4366 beta= 20.3022
[1] 522
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.587 alpha= 19.4468 beta= 20.2737
[1] 523
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4828 alpha= 19.4772 beta= 20.2912
[1] 524
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5936 alpha= 19.4773 beta= 20.2914
[1] 525
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3637 alpha= 19.4326 beta= 20.2264
[1] 526
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9984 alpha= 19.441 beta= 20.2598
[1] 527
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4954 alpha= 19.5077 beta= 20.298
[1] 528
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7994 alpha= 19.6179 beta= 20.2588
[1] 529
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3769 alpha= 19.5014 beta= 20.2932
[1] 530
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5374 alpha= 19.5445 beta= 20.293
[1] 531
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3929 alpha= 19.4496 beta= 20.2971
[1] 532
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5521 alpha= 19.527 beta= 20.2952
[1] 533
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8186 alpha= 19.4859 beta= 20.2955
[1] 534
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5775 alpha= 19.4104 beta= 20.2616
[1] 535
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4939 alpha= 19.4822 beta= 20.2753
[1] 536
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4656 alpha= 19.4155 beta= 20.2654
[1] 537
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4145 alpha= 19.1725 beta= 20.2458
[1] 538
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.547 alpha= 19.3996 beta= 20.2468
[1] 539
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5415 alpha= 19.3435 beta= 20.2387
[1] 540
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.466 alpha= 19.3154 beta= 20.2377
[1] 541
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5687 alpha= 19.3332 beta= 20.2568
[1] 542
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.32 alpha= 19.3957 beta= 20.2644
[1] 543
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3492 alpha= 19.3682 beta= 20.2677
[1] 544
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4506 alpha= 19.3043 beta= 20.2928
[1] 545
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2518 alpha= 19.1748 beta= 20.3746
[1] 546
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4328 alpha= 19.428 beta= 20.3745
[1] 547
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.499 alpha= 19.4018 beta= 20.375
[1] 548
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 80.6422 alpha= 7.4718 beta= 21.8856
[1] 549
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6138 alpha= 19.4088 beta= 20.362
[1] 550
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5553 alpha= 19.3737 beta= 20.3502
[1] 551
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9179 alpha= 19.3727 beta= 20.3624
[1] 552
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3242 alpha= 19.4943 beta= 20.3739
[1] 553
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4405 alpha= 19.2792 beta= 20.3749
[1] 554
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5524 alpha= 19.0759 beta= 20.4907
[1] 555
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7313 alpha= 18.8562 beta= 20.479
[1] 556
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.8892 alpha= 18.6805 beta= 20.5039
[1] 557
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4394 alpha= 19.4246 beta= 20.4613
[1] 558
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7628 alpha= 18.7594 beta= 20.4862
[1] 559
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5274 alpha= 19.3442 beta= 20.4903
[1] 560
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3875 alpha= 19.3686 beta= 20.4423
[1] 561
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0144 alpha= 19.4171 beta= 20.4499
[1] 562
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6371 alpha= 19.3817 beta= 20.4481
[1] 563
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4352 alpha= 19.4935 beta= 20.4473
[1] 564
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.69 alpha= 18.8471 beta= 20.4617
[1] 565
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7125 alpha= 18.879 beta= 20.4593
[1] 566
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6022 alpha= 19.4177 beta= 20.4445
[1] 567
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4171 alpha= 19.5803 beta= 20.423
[1] 568
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7355 alpha= 19.5634 beta= 20.3885
[1] 569
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9002 alpha= 19.449 beta= 20.3871
[1] 570
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.695 alpha= 19.3271 beta= 20.4149
[1] 571
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3434 alpha= 19.6845 beta= 20.5076
[1] 572
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3522 alpha= 19.8099 beta= 20.4778
[1] 573
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3818 alpha= 19.7633 beta= 20.4709
[1] 574
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 45.5502 alpha= 11.4306 beta= 20.9086
[1] 575
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.28 alpha= 19.357 beta= 20.2571
[1] 576
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7028 alpha= 19.7397 beta= 20.1836
[1] 577
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 45.7644 alpha= 11.281 beta= 20.7658
[1] 578
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3039 alpha= 19.8522 beta= 20.1408
[1] 579
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.3514 alpha= 19.4706 beta= 20.1318
[1] 580
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.3978 alpha= 19.3876 beta= 20.1019
[1] 581
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2887 alpha= 19.6938 beta= 19.9328
[1] 582
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2832 alpha= 19.6721 beta= 19.9309
[1] 583
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4499 alpha= 19.171 beta= 19.9292
[1] 584
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1736 alpha= 19.6089 beta= 19.8688
[1] 585
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3188 alpha= 19.4899 beta= 19.8704
[1] 586
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3536 alpha= 19.3158 beta= 19.7516
[1] 587
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3933 alpha= 19.3374 beta= 19.7443
[1] 588
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5241 alpha= 19.6056 beta= 19.7329
[1] 589
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3024 alpha= 19.6152 beta= 19.7443
[1] 590
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6255 alpha= 19.5409 beta= 19.7201
[1] 591
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3947 alpha= 19.6157 beta= 19.6829
[1] 592
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3952 alpha= 19.5915 beta= 19.6985
[1] 593
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0977 alpha= 19.7614 beta= 19.809
[1] 594
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2892 alpha= 19.7918 beta= 19.7561
[1] 595
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1222 alpha= 19.8555 beta= 19.7572
[1] 596
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1111 alpha= 19.9929 beta= 19.6559
[1] 597
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0451 alpha= 20.0665 beta= 19.6512
[1] 598
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0115 alpha= 20.1123 beta= 19.6326
[1] 599
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0197 alpha= 19.9492 beta= 19.5949
[1] 600
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9549 alpha= 19.9331 beta= 19.595
[1] 601
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0633 alpha= 20.0049 beta= 19.9137
[1] 602
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9127 alpha= 20.1821 beta= 19.9046
[1] 603
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9606 alpha= 20.0929 beta= 19.9113
[1] 604
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9906 alpha= 19.9202 beta= 19.9576
[1] 605
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1082 alpha= 19.9296 beta= 19.9567
[1] 606
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0159 alpha= 19.8831 beta= 19.9661
[1] 607
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2042 alpha= 19.8239 beta= 19.9794
[1] 608
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1105 alpha= 19.7384 beta= 19.9473
[1] 609
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2263 alpha= 19.7894 beta= 19.9502
[1] 610
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0563 alpha= 19.8963 beta= 19.9997
[1] 611
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1604 alpha= 19.7503 beta= 19.9692
[1] 612
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2141 alpha= 19.657 beta= 19.947
[1] 613
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1808 alpha= 19.4963 beta= 19.8992
[1] 614
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2298 alpha= 19.6107 beta= 19.8916
[1] 615
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1663 alpha= 19.7067 beta= 19.9211
[1] 616
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1 alpha= 19.6653 beta= 19.9211
[1] 617
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1438 alpha= 19.7444 beta= 19.9258
[1] 618
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1365 alpha= 19.7769 beta= 19.9693
[1] 619
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1458 alpha= 19.8166 beta= 19.9731
[1] 620
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4702 alpha= 18.2383 beta= 17.2946
[1] 621
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5873 alpha= 18.1356 beta= 17.3112
[1] 622
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6193 alpha= 18.277 beta= 17.3099
[1] 623
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.614 alpha= 18.4765 beta= 17.2836
[1] 624
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.408 alpha= 18.5268 beta= 17.2834
[1] 625
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0167 alpha= 19.1095 beta= 17.2992
[1] 626
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3125 alpha= 18.969 beta= 17.2974
[1] 627
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8205 alpha= 19.0795 beta= 17.2901
[1] 628
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0686 alpha= 19.0259 beta= 17.2838
[1] 629
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2491 alpha= 18.9618 beta= 17.3041
[1] 630
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1449 alpha= 19.0164 beta= 17.3172
[1] 631
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9038 alpha= 19.1074 beta= 17.3186
[1] 632
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.957 alpha= 19.1155 beta= 17.2909
[1] 633
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2479 alpha= 19.0199 beta= 17.2926
[1] 634
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0208 alpha= 19.096 beta= 17.2903
[1] 635
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2202 alpha= 19.132 beta= 17.2877
[1] 636
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.123 alpha= 19.08 beta= 17.2236
[1] 637
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9514 alpha= 19.0494 beta= 17.1926
[1] 638
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1617 alpha= 19.0623 beta= 17.1932
[1] 639
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1443 alpha= 19.177 beta= 17.1838
[1] 640
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0509 alpha= 19.1141 beta= 17.1812
[1] 641
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1857 alpha= 19.4246 beta= 17.1617
[1] 642
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1137 alpha= 19.281 beta= 17.1598
[1] 643
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1184 alpha= 19.1486 beta= 17.1184
[1] 644
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0412 alpha= 19.1571 beta= 17.0967
[1] 645
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1138 alpha= 19.2806 beta= 17.0741
[1] 646
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.312 alpha= 19.3942 beta= 17.0665
[1] 647
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8185 alpha= 19.4379 beta= 17.0302
[1] 648
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0095 alpha= 19.5195 beta= 17.0453
[1] 649
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0634 alpha= 19.5894 beta= 17.0351
[1] 650
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8331 alpha= 19.5143 beta= 17.061
[1] 651
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9397 alpha= 19.4405 beta= 17.0574
[1] 652
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9288 alpha= 19.4031 beta= 17.0424
[1] 653
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.97 alpha= 19.4031 beta= 17.0529
[1] 654
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0633 alpha= 19.4109 beta= 17.0379
[1] 655
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.95 alpha= 19.3334 beta= 16.9855
[1] 656
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9584 alpha= 19.3183 beta= 16.9883
[1] 657
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0087 alpha= 19.1076 beta= 16.9753
[1] 658
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0212 alpha= 19.1982 beta= 17.0332
[1] 659
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9534 alpha= 19.4246 beta= 17.0138
[1] 660
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0659 alpha= 19.2461 beta= 17.0604
[1] 661
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0476 alpha= 19.2241 beta= 17.0697
[1] 662
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9524 alpha= 19.2871 beta= 17.0475
[1] 663
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.945 alpha= 19.4672 beta= 17.0263
[1] 664
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8861 alpha= 19.3383 beta= 17.0292
[1] 665
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7294 alpha= 19.4626 beta= 16.9938
[1] 666
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8813 alpha= 19.3235 beta= 16.9776
[1] 667
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9967 alpha= 19.3633 beta= 16.981
[1] 668
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.873 alpha= 19.2793 beta= 16.976
[1] 669
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9481 alpha= 19.3261 beta= 16.9775
[1] 670
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9518 alpha= 19.3272 beta= 16.956
[1] 671
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.939 alpha= 19.369 beta= 16.9538
[1] 672
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8258 alpha= 19.3925 beta= 16.956
[1] 673
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9633 alpha= 19.3987 beta= 16.9554
[1] 674
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.003 alpha= 19.3874 beta= 16.9844
[1] 675
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9736 alpha= 19.4438 beta= 16.9557
[1] 676
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8336 alpha= 19.4881 beta= 16.9581
[1] 677
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9581 alpha= 19.4783 beta= 16.973
[1] 678
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.3648 alpha= 19.0333 beta= 16.5004
[1] 679
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.542 alpha= 18.8785 beta= 16.4596
[1] 680
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 70.1808 alpha= 6.9468 beta= 13.924
[1] 681
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3375 alpha= 16.7759 beta= 13.1817
[1] 682
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1301 alpha= 16.8421 beta= 13.1647
[1] 683
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.9668 alpha= 17.0066 beta= 13.1724
[1] 684
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 45.4461 alpha= 10.26 beta= 13.4728
[1] 685
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4507 alpha= 18.2688 beta= 13.1533
[1] 686
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1487 alpha= 19.4107 beta= 16.4407
[1] 687
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.11 alpha= 19.424 beta= 16.4426
[1] 688
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.9273 alpha= 19.5822 beta= 16.4175
[1] 689
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7201 alpha= 19.731 beta= 16.3997
[1] 690
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0307 alpha= 19.7561 beta= 16.376
[1] 691
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.9023 alpha= 19.7885 beta= 16.3823
[1] 692
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.9675 alpha= 19.7827 beta= 16.388
[1] 693
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.816 alpha= 20.2268 beta= 16.3995
[1] 694
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5775 alpha= 20.0435 beta= 16.4159
[1] 695
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4212 alpha= 20.4907 beta= 16.3638
[1] 696
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2473 alpha= 20.277 beta= 16.4206
[1] 697
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2078 alpha= 20.5454 beta= 16.4205
[1] 698
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0579 alpha= 20.637 beta= 16.4114
[1] 699
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1272 alpha= 20.5113 beta= 16.4305
[1] 700
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5329 alpha= 20.8979 beta= 16.4226
[1] 701
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.3048 alpha= 20.7306 beta= 16.4417
[1] 702
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1143 alpha= 20.8619 beta= 16.4377
[1] 703
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0539 alpha= 20.8895 beta= 16.3865
[1] 704
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1868 alpha= 20.9935 beta= 16.3786
[1] 705
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0666 alpha= 21.0783 beta= 16.3521
[1] 706
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9427 alpha= 21.3391 beta= 16.3168
[1] 707
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9024 alpha= 21.5194 beta= 16.3132
[1] 708
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8111 alpha= 21.5277 beta= 16.2911
[1] 709
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7521 alpha= 21.5311 beta= 16.285
[1] 710
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7837 alpha= 21.4731 beta= 16.3206
[1] 711
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7769 alpha= 21.5386 beta= 16.3159
[1] 712
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7428 alpha= 21.4428 beta= 16.2751
[1] 713
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3202 alpha= 21.3936 beta= 16.2707
[1] 714
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4447 alpha= 21.4421 beta= 16.2672
[1] 715
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7776 alpha= 21.6721 beta= 16.2668
[1] 716
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8415 alpha= 21.6009 beta= 16.2587
[1] 717
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7028 alpha= 21.6521 beta= 16.2536
[1] 718
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5395 alpha= 21.5667 beta= 16.2616
[1] 719
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5554 alpha= 21.5797 beta= 16.2531
[1] 720
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.309 alpha= 21.6006 beta= 16.2237
[1] 721
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6015 alpha= 21.6358 beta= 16.2587
[1] 722
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6042 alpha= 21.5545 beta= 16.205
[1] 723
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5779 alpha= 21.5521 beta= 16.2053
[1] 724
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0952 alpha= 21.6161 beta= 16.2011
[1] 725
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3007 alpha= 21.5058 beta= 16.1457
[1] 726
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8904 alpha= 21.4409 beta= 16.1801
[1] 727
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9932 alpha= 21.3636 beta= 16.2143
[1] 728
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8545 alpha= 21.2755 beta= 16.2116
[1] 729
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.914 alpha= 21.3343 beta= 16.203
[1] 730
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9868 alpha= 21.2708 beta= 16.1956
[1] 731
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0835 alpha= 21.3268 beta= 16.1843
[1] 732
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9453 alpha= 21.2336 beta= 16.1913
[1] 733
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9341 alpha= 21.2881 beta= 16.1853
[1] 734
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9739 alpha= 21.1459 beta= 16.2525
[1] 735
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9884 alpha= 21.18 beta= 16.1837
[1] 736
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.851 alpha= 21.2182 beta= 16.1791
[1] 737
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7897 alpha= 20.97 beta= 16.1802
[1] 738
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6987 alpha= 21.2859 beta= 16.2162
[1] 739
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9711 alpha= 21.2164 beta= 16.1466
[1] 740
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8255 alpha= 21.0344 beta= 16.1537
[1] 741
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9607 alpha= 21.1183 beta= 16.1561
[1] 742
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1207 alpha= 21.087 beta= 16.1522
[1] 743
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9444 alpha= 21.2483 beta= 16.1595
[1] 744
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4117 alpha= 21.0821 beta= 16.158
[1] 745
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0211 alpha= 21.1775 beta= 16.1178
[1] 746
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1564 alpha= 21.3705 beta= 16.1165
[1] 747
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9431 alpha= 21.2291 beta= 16.1092
[1] 748
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9115 alpha= 21.2514 beta= 16.1199
[1] 749
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8189 alpha= 21.1743 beta= 16.13
[1] 750
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9318 alpha= 21.2525 beta= 16.1217
[1] 751
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9501 alpha= 21.2075 beta= 16.1106
[1] 752
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9028 alpha= 21.1274 beta= 16.1096
[1] 753
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1472 alpha= 21.265 beta= 16.0988
[1] 754
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5744 alpha= 21.3974 beta= 16.079
[1] 755
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6185 alpha= 21.1394 beta= 16.0927
[1] 756
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8083 alpha= 21.2118 beta= 16.0961
[1] 757
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8597 alpha= 21.257 beta= 16.0977
[1] 758
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7063 alpha= 21.1483 beta= 16.1014
[1] 759
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8899 alpha= 21.2241 beta= 16.062
[1] 760
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9749 alpha= 21.4865 beta= 16.0062
[1] 761
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6596 alpha= 21.2368 beta= 15.9984
[1] 762
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3191 alpha= 21.1845 beta= 16.0028
[1] 763
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7502 alpha= 21.2674 beta= 16.011
[1] 764
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4327 alpha= 21.1864 beta= 16.0337
[1] 765
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7372 alpha= 21.155 beta= 16.0226
[1] 766
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.814 alpha= 21.2658 beta= 16.0169
[1] 767
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6864 alpha= 21.1369 beta= 16.0237
[1] 768
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5312 alpha= 21.3053 beta= 16.0007
[1] 769
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2827 alpha= 21.1673 beta= 16.0033
[1] 770
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.387 alpha= 21.2739 beta= 16.0062
[1] 771
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6177 alpha= 21.3297 beta= 15.9921
[1] 772
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4311 alpha= 21.1834 beta= 15.9951
[1] 773
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3023 alpha= 21.052 beta= 16.0257
[1] 774
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3188 alpha= 21.007 beta= 16.0253
[1] 775
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5713 alpha= 20.8648 beta= 15.4714
[1] 776
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3257 alpha= 20.7608 beta= 15.5321
[1] 777
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9736 alpha= 20.4257 beta= 15.439
[1] 778
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.053 alpha= 20.3798 beta= 15.4204
[1] 779
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1493 alpha= 20.2643 beta= 15.4161
[1] 780
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2221 alpha= 20.4118 beta= 15.4363
[1] 781
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7288 alpha= 20.5496 beta= 15.3798
[1] 782
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.995 alpha= 20.5963 beta= 15.3981
[1] 783
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9616 alpha= 20.6555 beta= 15.3935
[1] 784
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8313 alpha= 20.5578 beta= 15.3803
[1] 785
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1459 alpha= 20.6439 beta= 15.3365
[1] 786
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9776 alpha= 20.6297 beta= 15.3037
[1] 787
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2487 alpha= 20.2987 beta= 15.3716
[1] 788
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1345 alpha= 20.6298 beta= 15.358
[1] 789
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.003 alpha= 20.5707 beta= 15.3616
[1] 790
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9182 alpha= 20.5067 beta= 15.2876
[1] 791
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6786 alpha= 20.4119 beta= 15.2633
[1] 792
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9911 alpha= 20.4158 beta= 15.2504
[1] 793
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.993 alpha= 20.3667 beta= 15.2245
[1] 794
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0938 alpha= 20.1754 beta= 15.2649
[1] 795
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9757 alpha= 20.4747 beta= 15.2687
[1] 796
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9276 alpha= 20.5471 beta= 15.251
[1] 797
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.9481 alpha= 17.5471 beta= 12.8783
[1] 798
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.595 alpha= 17.8749 beta= 12.8732
[1] 799
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9804 alpha= 17.8942 beta= 12.8656
[1] 800
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5177 alpha= 18.01 beta= 12.8643
[1] 801
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5642 alpha= 17.8583 beta= 12.8209
[1] 802
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.3261 alpha= 18.159 beta= 12.6926
[1] 803
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1819 alpha= 18.1132 beta= 12.6901
[1] 804
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1613 alpha= 18.1945 beta= 12.6753
[1] 805
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2351 alpha= 18.3472 beta= 12.6822
[1] 806
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.131 alpha= 18.2839 beta= 12.6838
[1] 807
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.3544 alpha= 18.6141 beta= 12.6716
[1] 808
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0388 alpha= 18.4804 beta= 12.6848
[1] 809
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8656 alpha= 18.4354 beta= 12.6634
[1] 810
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.612 alpha= 18.3388 beta= 12.6556
[1] 811
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6162 alpha= 18.5107 beta= 12.6413
[1] 812
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9853 alpha= 18.65 beta= 12.6117
[1] 813
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6078 alpha= 18.3621 beta= 12.5583
[1] 814
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1135 alpha= 18.5022 beta= 12.5814
[1] 815
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2196 alpha= 18.6125 beta= 12.5792
[1] 816
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1035 alpha= 18.6167 beta= 12.5459
[1] 817
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0363 alpha= 18.5286 beta= 12.5515
[1] 818
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.3466 alpha= 18.6955 beta= 12.5298
[1] 819
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2181 alpha= 18.996 beta= 12.5349
[1] 820
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4115 alpha= 18.6612 beta= 12.4869
[1] 821
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5326 alpha= 18.5139 beta= 12.5088
[1] 822
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2521 alpha= 18.7959 beta= 12.504
[1] 823
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2512 alpha= 18.6994 beta= 12.4796
[1] 824
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1215 alpha= 18.5966 beta= 12.4827
[1] 825
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2589 alpha= 18.6018 beta= 12.4554
[1] 826
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0831 alpha= 18.7588 beta= 12.4357
[1] 827
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.156 alpha= 18.79 beta= 12.4399
[1] 828
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.279 alpha= 19.0446 beta= 12.436
[1] 829
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.192 alpha= 18.7402 beta= 12.4403
[1] 830
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4028 alpha= 18.642 beta= 12.4623
[1] 831
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.3222 alpha= 18.653 beta= 12.471
[1] 832
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7967 alpha= 18.5492 beta= 12.4671
[1] 833
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2742 alpha= 18.556 beta= 12.4558
[1] 834
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.457 alpha= 18.7868 beta= 12.441
[1] 835
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7702 alpha= 18.5731 beta= 12.4791
[1] 836
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6849 alpha= 18.6255 beta= 12.4309
[1] 837
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2369 alpha= 18.7357 beta= 12.4369
[1] 838
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9036 alpha= 18.7274 beta= 12.4385
[1] 839
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9227 alpha= 18.7665 beta= 12.4285
[1] 840
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6429 alpha= 18.684 beta= 12.4161
[1] 841
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1533 alpha= 18.844 beta= 12.4135
[1] 842
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8835 alpha= 18.6841 beta= 12.4136
[1] 843
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1351 alpha= 18.7152 beta= 12.4119
[1] 844
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7786 alpha= 18.5137 beta= 12.4154
[1] 845
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2225 alpha= 18.7848 beta= 12.349
[1] 846
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0997 alpha= 18.7044 beta= 12.3414
[1] 847
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5892 alpha= 18.7052 beta= 12.3177
[1] 848
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5361 alpha= 18.5939 beta= 12.2601
[1] 849
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3652 alpha= 18.8705 beta= 12.2162
[1] 850
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.024 alpha= 18.9906 beta= 12.2017
[1] 851
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3901 alpha= 18.9745 beta= 12.1506
[1] 852
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.001 alpha= 18.9645 beta= 12.128
[1] 853
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9599 alpha= 18.8871 beta= 12.1284
[1] 854
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2586 alpha= 18.981 beta= 12.1101
[1] 855
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7033 alpha= 18.8726 beta= 12.113
[1] 856
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7025 alpha= 18.9427 beta= 12.0816
[1] 857
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3166 alpha= 18.8427 beta= 12.0768
[1] 858
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6312 alpha= 19.0516 beta= 12.1664
[1] 859
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2054 alpha= 19.141 beta= 12.167
[1] 860
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6831 alpha= 19.073 beta= 12.1875
[1] 861
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.631 alpha= 18.9952 beta= 12.1857
[1] 862
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6197 alpha= 19.0642 beta= 12.1925
[1] 863
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6823 alpha= 18.7701 beta= 12.0351
[1] 864
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9074 alpha= 19.2598 beta= 12.0694
[1] 865
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6433 alpha= 19.0782 beta= 12.0694
[1] 866
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.37 alpha= 19.1884 beta= 12.0225
[1] 867
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0155 alpha= 19.2197 beta= 11.9601
[1] 868
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7889 alpha= 19.5029 beta= 11.9319
[1] 869
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1464 alpha= 19.1236 beta= 11.9663
[1] 870
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0533 alpha= 19.2386 beta= 11.9558
[1] 871
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5723 alpha= 19.1285 beta= 11.9527
[1] 872
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8363 alpha= 19.4326 beta= 11.9349
[1] 873
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9323 alpha= 19.2787 beta= 11.8987
[1] 874
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4769 alpha= 19.548 beta= 11.9057
[1] 875
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3353 alpha= 19.5716 beta= 11.9073
[1] 876
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2863 alpha= 19.4304 beta= 11.9091
[1] 877
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1797 alpha= 19.793 beta= 11.8907
[1] 878
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0862 alpha= 19.5974 beta= 11.8681
[1] 879
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1329 alpha= 19.4709 beta= 11.7621
[1] 880
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3024 alpha= 19.7369 beta= 11.7499
[1] 881
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1093 alpha= 19.6088 beta= 11.7565
[1] 882
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8709 alpha= 19.3707 beta= 11.7434
[1] 883
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2359 alpha= 19.1356 beta= 11.7356
[1] 884
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.6379 alpha= 19.1761 beta= 11.7365
[1] 885
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4108 alpha= 18.8823 beta= 11.7275
[1] 886
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9396 alpha= 19.0145 beta= 11.7258
[1] 887
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.1373 alpha= 18.7342 beta= 11.6859
[1] 888
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.3753 alpha= 18.5443 beta= 11.7103
[1] 889
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0319 alpha= 20.6867 beta= 13.9467
[1] 890
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.604 alpha= 19.6966 beta= 13.9406
[1] 891
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.8319 alpha= 19.314 beta= 13.919
[1] 892
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6688 alpha= 19.2126 beta= 13.936
[1] 893
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.9108 alpha= 19.2445 beta= 13.9674
[1] 894
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0142 alpha= 19.521 beta= 14.6368
[1] 895
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.152 alpha= 19.1498 beta= 14.6116
[1] 896
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4203 alpha= 18.8807 beta= 14.5747
[1] 897
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7802 alpha= 18.8607 beta= 14.5532
[1] 898
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.8619 alpha= 19.005 beta= 14.5448
[1] 899
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.775 alpha= 19.2736 beta= 14.5359
[1] 900
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6119 alpha= 19.3153 beta= 14.485
[1] 901
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4311 alpha= 19.2814 beta= 14.4825
[1] 902
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.515 alpha= 19.2442 beta= 14.4855
[1] 903
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6696 alpha= 19.3271 beta= 14.4794
[1] 904
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.593 alpha= 19.4631 beta= 14.4433
[1] 905
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4663 alpha= 19.3921 beta= 14.4388
[1] 906
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7378 alpha= 19.3701 beta= 14.3598
[1] 907
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.587 alpha= 19.2545 beta= 14.3526
[1] 908
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4925 alpha= 19.434 beta= 14.3346
[1] 909
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7176 alpha= 19.1225 beta= 14.3234
[1] 910
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7462 alpha= 19.4903 beta= 14.2918
[1] 911
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.419 alpha= 19.1065 beta= 14.3139
[1] 912
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5601 alpha= 19.1354 beta= 14.323
[1] 913
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7034 alpha= 19.507 beta= 14.3924
[1] 914
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.3297 alpha= 19.4195 beta= 14.3962
[1] 915
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.3244 alpha= 19.502 beta= 14.3904
[1] 916
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0295 alpha= 19.717 beta= 14.2299
[1] 917
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9883 alpha= 19.8414 beta= 14.2323
[1] 918
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9493 alpha= 19.865 beta= 14.1959
[1] 919
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7607 alpha= 19.8044 beta= 14.2344
[1] 920
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7986 alpha= 19.9644 beta= 14.1811
[1] 921
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9213 alpha= 19.9737 beta= 14.1811
[1] 922
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0687 alpha= 20.086 beta= 14.2864
[1] 923
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6272 alpha= 19.7166 beta= 14.3851
[1] 924
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5582 alpha= 19.7421 beta= 14.3855
[1] 925
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4153 alpha= 19.6347 beta= 14.3835
[1] 926
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.8439 alpha= 19.6439 beta= 14.4426
[1] 927
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.625 alpha= 19.5426 beta= 14.4388
[1] 928
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.8283 alpha= 19.6173 beta= 14.4121
[1] 929
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.8618 alpha= 19.5884 beta= 14.392
[1] 930
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.8711 alpha= 19.3048 beta= 14.3487
[1] 931
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.8646 alpha= 19.2814 beta= 14.3402
[1] 932
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3387 alpha= 19.6122 beta= 14.3273
[1] 933
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.9438 alpha= 19.4654 beta= 14.237
[1] 934
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.8101 alpha= 19.536 beta= 14.2299
[1] 935
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.8856 alpha= 19.5203 beta= 14.2629
[1] 936
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5751 alpha= 19.3838 beta= 14.2581
[1] 937
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.8579 alpha= 19.5855 beta= 14.2732
[1] 938
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.9248 alpha= 19.4908 beta= 14.2668
[1] 939
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5853 alpha= 19.5201 beta= 14.2193
[1] 940
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.8621 alpha= 19.5417 beta= 14.2176
[1] 941
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.4161 alpha= 19.4802 beta= 14.215
[1] 942
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.566 alpha= 19.3963 beta= 14.199
[1] 943
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7127 alpha= 19.4334 beta= 14.1993
[1] 944
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.8527 alpha= 19.2284 beta= 14.1705
[1] 945
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.8565 alpha= 19.0914 beta= 14.1082
[1] 946
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.9843 alpha= 19.2154 beta= 14.092
[1] 947
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0194 alpha= 19.1371 beta= 14.082
[1] 948
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0887 alpha= 19.0064 beta= 14.0757
[1] 949
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1637 alpha= 18.9109 beta= 14.0577
[1] 950
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3182 alpha= 18.6579 beta= 14.0583
[1] 951
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.294 alpha= 18.914 beta= 14.0189
[1] 952
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1578 alpha= 18.6844 beta= 13.9933
[1] 953
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0245 alpha= 18.4892 beta= 14.0057
[1] 954
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7493 alpha= 18.4333 beta= 13.9991
[1] 955
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6202 alpha= 18.5505 beta= 13.9797
[1] 956
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7152 alpha= 18.5631 beta= 14.0763
[1] 957
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4572 alpha= 18.6281 beta= 14.0583
[1] 958
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.461 alpha= 18.6936 beta= 14.0599
[1] 959
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5485 alpha= 18.6705 beta= 14.0611
[1] 960
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1138 alpha= 18.6706 beta= 14.0565
[1] 961
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.366 alpha= 18.7245 beta= 14.1697
[1] 962
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4145 alpha= 18.7692 beta= 14.1692
[1] 963
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2589 alpha= 19.0542 beta= 14.1396
[1] 964
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3465 alpha= 18.8869 beta= 14.1484
[1] 965
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.9487 alpha= 19.495 beta= 14.0117
[1] 966
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3153 alpha= 18.8133 beta= 14.213
[1] 967
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2801 alpha= 18.817 beta= 14.2181
[1] 968
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3896 alpha= 18.962 beta= 14.1981
[1] 969
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.6503 alpha= 18.9258 beta= 14.1372
[1] 970
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1673 alpha= 18.8521 beta= 14.1526
[1] 971
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2092 alpha= 18.8114 beta= 14.1597
[1] 972
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2162 alpha= 18.6725 beta= 14.2394
[1] 973
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3081 alpha= 18.9293 beta= 14.2391
[1] 974
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4929 alpha= 18.8117 beta= 14.2332
[1] 975
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.7055 alpha= 18.8082 beta= 14.1445
[1] 976
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1858 alpha= 19.163 beta= 13.9671
[1] 977
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0738 alpha= 19.1161 beta= 13.9492
[1] 978
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4096 alpha= 18.7646 beta= 13.9645
[1] 979
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1024 alpha= 19.2544 beta= 13.9967
[1] 980
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4921 alpha= 18.6897 beta= 14.0549
[1] 981
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 32.0637 alpha= 17.3502 beta= 14.0991
[1] 982
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4178 alpha= 18.9645 beta= 14.05
[1] 983
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7138 alpha= 19.2259 beta= 14.0423
[1] 984
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4973 alpha= 18.8442 beta= 13.9205
[1] 985
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.741 alpha= 18.8634 beta= 13.9251
[1] 986
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1402 alpha= 18.7222 beta= 13.9255
[1] 987
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4545 alpha= 18.8257 beta= 13.9142
[1] 988
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.8572 alpha= 17.4773 beta= 13.9571
[1] 989
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0896 alpha= 19.0914 beta= 13.9111
[1] 990
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1622 alpha= 19.09 beta= 13.9112
[1] 991
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0705 alpha= 19.215 beta= 13.8865
[1] 992
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1966 alpha= 19.2409 beta= 13.8739
[1] 993
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.169 alpha= 19.1633 beta= 13.9075
[1] 994
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.1854 alpha= 18.31 beta= 13.9204
[1] 995
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.9894 alpha= 17.4516 beta= 13.9288
[1] 996
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2366 alpha= 18.8489 beta= 13.8824
[1] 997
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 32.0728 alpha= 17.3331 beta= 13.9281
[1] 998
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 32.2687 alpha= 17.1124 beta= 13.905
[1] 999
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6887 alpha= 18.2927 beta= 13.8641
[1] 1000
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 32.4458 alpha= 17.0303 beta= 13.9042
[1] 1001
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 32.6445 alpha= 16.9411 beta= 13.9423
[1] 1002
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3727 alpha= 22.6498 beta= 21.3969
[1] 1003
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0918 alpha= 21.4607 beta= 21.3753
[1] 1004
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6411 alpha= 21.0458 beta= 21.215
[1] 1005
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4454 alpha= 21.148 beta= 21.1869
[1] 1006
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3627 alpha= 21.3 beta= 21.1767
[1] 1007
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0055 alpha= 21.3076 beta= 21.0626
[1] 1008
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0648 alpha= 21.335 beta= 21.0639
[1] 1009
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0922 alpha= 21.284 beta= 21.0912
[1] 1010
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1695 alpha= 20.9852 beta= 21.0512
[1] 1011
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1141 alpha= 20.9608 beta= 21.008
[1] 1012
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2181 alpha= 20.9495 beta= 20.9741
[1] 1013
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2891 alpha= 20.7881 beta= 20.9733
[1] 1014
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2753 alpha= 20.7544 beta= 20.9911
[1] 1015
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4582 alpha= 20.6553 beta= 20.9736
[1] 1016
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4958 alpha= 20.5194 beta= 21.0335
[1] 1017
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3695 alpha= 20.5442 beta= 21.0337
[1] 1018
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3921 alpha= 20.4014 beta= 21.0372
[1] 1019
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.401 alpha= 20.6214 beta= 21.0295
[1] 1020
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3873 alpha= 20.4437 beta= 21.0456
[1] 1021
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3744 alpha= 20.3338 beta= 21.0261
[1] 1022
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5193 alpha= 20.4518 beta= 21.0136
[1] 1023
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4598 alpha= 20.2465 beta= 21.0027
[1] 1024
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4989 alpha= 20.1302 beta= 21.0261
[1] 1025
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5615 alpha= 20.2363 beta= 21.0228
[1] 1026
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4874 alpha= 20.1799 beta= 21.0794
[1] 1027
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6229 alpha= 20.1468 beta= 21.2633
[1] 1028
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6102 alpha= 20.1533 beta= 21.2627
[1] 1029
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7811 alpha= 20.0572 beta= 21.2453
[1] 1030
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6694 alpha= 20.1696 beta= 21.2414
[1] 1031
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8023 alpha= 20.0747 beta= 21.2273
[1] 1032
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.759 alpha= 19.918 beta= 21.2321
[1] 1033
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6038 alpha= 20.0841 beta= 21.2317
[1] 1034
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.563 alpha= 20.102 beta= 21.2015
[1] 1035
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.911 alpha= 19.8291 beta= 21.265
[1] 1036
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.937 alpha= 19.9569 beta= 21.1838
[1] 1037
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.5193 alpha= 18.9423 beta= 21.1501
[1] 1038
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4573 alpha= 19.1532 beta= 21.1203
[1] 1039
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.1711 alpha= 19.6958 beta= 21.0489
[1] 1040
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6708 alpha= 20.2004 beta= 20.9954
[1] 1041
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4865 alpha= 20.3483 beta= 20.9661
[1] 1042
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6057 alpha= 19.9734 beta= 20.9618
[1] 1043
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8453 alpha= 19.6749 beta= 20.934
[1] 1044
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9155 alpha= 19.3418 beta= 20.8472
[1] 1045
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8387 alpha= 19.0625 beta= 20.825
[1] 1046
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7413 alpha= 19.1171 beta= 20.8211
[1] 1047
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9618 alpha= 19.0502 beta= 20.9933
[1] 1048
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8508 alpha= 19.0843 beta= 21.0823
[1] 1049
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 34.8803 alpha= 15.4457 beta= 21.2443
[1] 1050
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.0752 alpha= 18.7063 beta= 21.0599
[1] 1051
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 36.3863 alpha= 14.5396 beta= 21.2869
[1] 1052
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 37.2669 alpha= 14.0325 beta= 21.3637
[1] 1053
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.314 alpha= 18.6924 beta= 21.1428
[1] 1054
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 36.5192 alpha= 14.5626 beta= 21.3912
[1] 1055
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 36.6335 alpha= 14.5043 beta= 21.395
[1] 1056
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 36.2329 alpha= 14.6843 beta= 21.3731
[1] 1057
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 36.6409 alpha= 14.4995 beta= 21.4061
[1] 1058
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 36.6125 alpha= 14.4858 beta= 21.3664
[1] 1059
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 35.6307 alpha= 14.813 beta= 21.341
[1] 1060
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 35.5821 alpha= 14.8454 beta= 21.339
[1] 1061
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 35.8088 alpha= 14.7101 beta= 21.3414
[1] 1062
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 35.6669 alpha= 14.7876 beta= 21.331
[1] 1063
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 36.8867 alpha= 14.054 beta= 21.258
[1] 1064
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 37.4977 alpha= 13.7344 beta= 21.2223
[1] 1065
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 36.3958 alpha= 14.3747 beta= 21.2209
[1] 1066
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 35.8609 alpha= 14.7046 beta= 21.2356
[1] 1067
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7583 alpha= 18.9233 beta= 21.0254
[1] 1068
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6913 alpha= 18.906 beta= 21.056
[1] 1069
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 35.2994 alpha= 15.0542 beta= 21.2087
[1] 1070
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7412 alpha= 19.09 beta= 21.0047
[1] 1071
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7579 alpha= 19.0584 beta= 21.0845
[1] 1072
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8094 alpha= 18.9386 beta= 21.0887
[1] 1073
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7616 alpha= 19.1696 beta= 21.0939
[1] 1074
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6902 alpha= 19.3755 beta= 21.0882
[1] 1075
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5761 alpha= 19.563 beta= 21.089
[1] 1076
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5814 alpha= 19.5616 beta= 21.1
[1] 1077
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5663 alpha= 19.8199 beta= 21.1499
[1] 1078
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4943 alpha= 19.6735 beta= 21.1418
[1] 1079
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3974 alpha= 20.0267 beta= 21.1294
[1] 1080
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4696 alpha= 19.9171 beta= 21.1594
[1] 1081
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5233 alpha= 19.8643 beta= 21.158
[1] 1082
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5553 alpha= 20.1014 beta= 21.1602
[1] 1083
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4917 alpha= 20.0211 beta= 21.1466
[1] 1084
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5662 alpha= 20.1087 beta= 21.1461
[1] 1085
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5468 alpha= 20.1428 beta= 21.1404
[1] 1086
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4766 alpha= 20.1552 beta= 21.1412
[1] 1087
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4361 alpha= 20.0913 beta= 21.146
[1] 1088
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4903 alpha= 20.0832 beta= 21.1428
[1] 1089
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4411 alpha= 20.0776 beta= 21.1298
[1] 1090
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5897 alpha= 20.0455 beta= 21.2443
[1] 1091
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5762 alpha= 20.1141 beta= 21.2412
[1] 1092
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5877 alpha= 19.8518 beta= 21.2406
[1] 1093
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5993 alpha= 19.9754 beta= 21.2438
[1] 1094
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3277 alpha= 20.1193 beta= 21.2431
[1] 1095
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.351 alpha= 19.9214 beta= 21.2505
[1] 1096
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5124 alpha= 19.7958 beta= 21.2977
[1] 1097
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4246 alpha= 19.7813 beta= 21.2398
[1] 1098
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4879 alpha= 19.8375 beta= 21.2473
[1] 1099
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5947 alpha= 19.6556 beta= 21.216
[1] 1100
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5836 alpha= 19.6866 beta= 21.2242
[1] 1101
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6391 alpha= 19.7102 beta= 21.2235
[1] 1102
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6726 alpha= 19.6892 beta= 21.2138
[1] 1103
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6818 alpha= 19.6739 beta= 21.2135
[1] 1104
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6169 alpha= 19.5777 beta= 21.2236
[1] 1105
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6218 alpha= 19.4153 beta= 21.2253
[1] 1106
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5657 alpha= 19.5951 beta= 21.2218
[1] 1107
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6512 alpha= 19.5156 beta= 21.2404
[1] 1108
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5924 alpha= 19.7454 beta= 21.2116
[1] 1109
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4943 alpha= 19.6663 beta= 21.2095
[1] 1110
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.63 alpha= 19.6822 beta= 21.2192
[1] 1111
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6327 alpha= 19.4397 beta= 21.1016
[1] 1112
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.514 alpha= 19.44 beta= 21.1307
[1] 1113
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5123 alpha= 19.6441 beta= 21.104
[1] 1114
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.57 alpha= 19.3694 beta= 21.0272
[1] 1115
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5897 alpha= 19.3737 beta= 21.0123
[1] 1116
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4965 alpha= 19.4755 beta= 21.0318
[1] 1117
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7726 alpha= 19.194 beta= 21.0796
[1] 1118
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7539 alpha= 19.1963 beta= 21.1209
[1] 1119
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9269 alpha= 19.2208 beta= 21.109
[1] 1120
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8192 alpha= 19.1008 beta= 21.0993
[1] 1121
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5793 alpha= 19.385 beta= 21.0216
[1] 1122
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8547 alpha= 19.0928 beta= 21.0677
[1] 1123
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6843 alpha= 19.3243 beta= 21.0446
[1] 1124
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9865 alpha= 19.1505 beta= 21.0391
[1] 1125
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9912 alpha= 18.8658 beta= 21.0495
[1] 1126
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 34.4309 alpha= 15.7488 beta= 21.1269
[1] 1127
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 34.8944 alpha= 15.4861 beta= 21.1245
[1] 1128
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.1094 alpha= 18.5705 beta= 20.9753
[1] 1129
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 34.0122 alpha= 16.0136 beta= 21.0712
[1] 1130
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.3097 alpha= 18.116 beta= 20.9218
[1] 1131
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 34.3626 alpha= 15.7476 beta= 21.0539
[1] 1132
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 34.993 alpha= 15.3949 beta= 21.0323
[1] 1133
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 35.2199 alpha= 15.2657 beta= 21.1421
[1] 1134
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4943 alpha= 18.2379 beta= 20.993
[1] 1135
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 34.9042 alpha= 15.4605 beta= 21.1378
[1] 1136
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 34.8042 alpha= 15.5533 beta= 21.188
[1] 1137
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.1956 alpha= 18.3002 beta= 21.0052
[1] 1138
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4183 alpha= 18.3412 beta= 20.9957
[1] 1139
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 35.0782 alpha= 15.3203 beta= 21.1377
[1] 1140
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 35.3906 alpha= 15.1537 beta= 21.1581
[1] 1141
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 35.5742 alpha= 15.0788 beta= 21.1472
[1] 1142
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.2844 alpha= 18.4202 beta= 20.9155
[1] 1143
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.157 alpha= 18.6646 beta= 20.9094
[1] 1144
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.079 alpha= 18.4806 beta= 20.9163
[1] 1145
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 35.5859 alpha= 15.0489 beta= 21.1173
[1] 1146
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 35.4318 alpha= 15.1164 beta= 21.0954
[1] 1147
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.0929 alpha= 18.6547 beta= 20.9363
[1] 1148
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 35.8655 alpha= 14.9691 beta= 21.1376
[1] 1149
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.0944 alpha= 18.3633 beta= 20.9523
[1] 1150
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.1072 alpha= 18.3444 beta= 20.9567
[1] 1151
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 36.0422 alpha= 14.8525 beta= 21.1789
[1] 1152
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 35.9864 alpha= 14.8726 beta= 21.172
[1] 1153
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 35.8641 alpha= 14.9256 beta= 21.1571
[1] 1154
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.2083 alpha= 18.186 beta= 21.0077
[1] 1155
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.2226 alpha= 18.1297 beta= 21.0086
[1] 1156
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 36.0465 alpha= 14.8416 beta= 21.1957
[1] 1157
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 36.2863 alpha= 14.6837 beta= 21.1065
[1] 1158
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 36.1775 alpha= 14.7196 beta= 21.0912
[1] 1159
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 36.2824 alpha= 14.6794 beta= 21.0772
[1] 1160
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 36.4602 alpha= 14.6025 beta= 21.0694
[1] 1161
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 36.8011 alpha= 14.3985 beta= 20.7831
[1] 1162
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 37.6222 alpha= 13.9821 beta= 20.7729
[1] 1163
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 37.4529 alpha= 14.0347 beta= 20.8231
[1] 1164
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 37.6429 alpha= 13.9921 beta= 20.7827
[1] 1165
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 37.6143 alpha= 14.0046 beta= 20.868
[1] 1166
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 36.4786 alpha= 14.4981 beta= 20.4927
[1] 1167
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 34.5565 alpha= 15.4408 beta= 20.3286
[1] 1168
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.5716 alpha= 20.1381 beta= 20.0809
[1] 1169
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.3026 alpha= 20.7623 beta= 20.02
[1] 1170
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4335 alpha= 22.1924 beta= 23.1664
[1] 1171
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7416 alpha= 19.8713 beta= 22.8633
[1] 1172
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5545 alpha= 19.8802 beta= 22.8663
[1] 1173
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6617 alpha= 19.7428 beta= 22.8584
[1] 1174
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7353 alpha= 19.5875 beta= 22.8662
[1] 1175
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7487 alpha= 19.6773 beta= 22.8597
[1] 1176
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4228 alpha= 20.1609 beta= 22.5945
[1] 1177
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.1606 alpha= 19.3861 beta= 22.5529
[1] 1178
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.1564 alpha= 19.5193 beta= 22.5993
[1] 1179
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.1858 alpha= 19.5286 beta= 22.6806
[1] 1180
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 42.8536 alpha= 11.8088 beta= 23.093
[1] 1181
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8527 alpha= 20.026 beta= 22.5157
[1] 1182
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7641 alpha= 20.1729 beta= 22.5082
[1] 1183
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6086 alpha= 20.4648 beta= 22.3705
[1] 1184
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3672 alpha= 20.4412 beta= 22.3601
[1] 1185
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6569 alpha= 21.7666 beta= 28.1205
[1] 1186
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3141 alpha= 20.0626 beta= 28.0914
[1] 1187
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3234 alpha= 20.243 beta= 28.0455
[1] 1188
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4907 alpha= 19.9918 beta= 28.081
[1] 1189
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5112 alpha= 19.9962 beta= 28.0327
[1] 1190
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5973 alpha= 19.9398 beta= 28.0365
[1] 1191
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5614 alpha= 19.9705 beta= 28.0124
[1] 1192
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5162 alpha= 20.0066 beta= 28.012
[1] 1193
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6365 alpha= 19.8696 beta= 28.0163
[1] 1194
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7188 alpha= 19.8009 beta= 27.9827
[1] 1195
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8575 alpha= 19.8208 beta= 28.0882
[1] 1196
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.3904 alpha= 19.1463 beta= 28.1705
[1] 1197
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4521 alpha= 19.0786 beta= 28.166
[1] 1198
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4337 alpha= 19.09 beta= 28.1869
[1] 1199
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.5016 alpha= 18.9999 beta= 28.2182
[1] 1200
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4105 alpha= 19.0735 beta= 28.1432
[1] 1201
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.918 alpha= 19.5904 beta= 27.9227
[1] 1202
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9331 alpha= 19.4778 beta= 27.9338
[1] 1203
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8693 alpha= 19.5253 beta= 27.9311
[1] 1204
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9143 alpha= 19.4843 beta= 27.9304
[1] 1205
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9061 alpha= 19.4753 beta= 27.9776
[1] 1206
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9538 alpha= 19.4905 beta= 27.9783
[1] 1207
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.97 alpha= 19.4861 beta= 27.9777
[1] 1208
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9925 alpha= 19.4622 beta= 28.0051
[1] 1209
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.0793 alpha= 19.409 beta= 27.9768
[1] 1210
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.0371 alpha= 19.4522 beta= 27.962
[1] 1211
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.0806 alpha= 19.378 beta= 28.0491
[1] 1212
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8064 alpha= 19.7323 beta= 28.0865
[1] 1213
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7978 alpha= 19.7439 beta= 28.0868
[1] 1214
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.941 alpha= 19.6112 beta= 28.0179
[1] 1215
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8787 alpha= 19.6831 beta= 28.0225
[1] 1216
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9487 alpha= 19.6052 beta= 28.0486
[1] 1217
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9014 alpha= 19.6447 beta= 28.0613
[1] 1218
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8511 alpha= 19.6915 beta= 28.0014
[1] 1219
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4008 alpha= 20.1551 beta= 27.6028
[1] 1220
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3696 alpha= 20.0188 beta= 27.6199
[1] 1221
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5519 alpha= 19.9582 beta= 27.6215
[1] 1222
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5419 alpha= 19.9237 beta= 27.6003
[1] 1223
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5705 alpha= 19.9544 beta= 27.6408
[1] 1224
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5915 alpha= 19.9204 beta= 27.6397
[1] 1225
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.558 alpha= 19.9434 beta= 27.6488
[1] 1226
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5738 alpha= 19.9731 beta= 27.6814
[1] 1227
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.54 alpha= 19.8241 beta= 27.6963
[1] 1228
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4989 alpha= 19.9016 beta= 27.6676
[1] 1229
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5598 alpha= 19.8137 beta= 27.5549
[1] 1230
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5848 alpha= 19.7355 beta= 27.4837
[1] 1231
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5284 alpha= 19.7771 beta= 27.4839
[1] 1232
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.528 alpha= 19.8008 beta= 27.4821
[1] 1233
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4766 alpha= 19.8296 beta= 27.4487
[1] 1234
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.487 alpha= 19.7902 beta= 27.4866
[1] 1235
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5508 alpha= 19.8455 beta= 27.4749
[1] 1236
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3053 alpha= 20.0119 beta= 27.6238
[1] 1237
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0696 alpha= 20.1448 beta= 27.1637
[1] 1238
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2338 alpha= 20.0064 beta= 27.0605
[1] 1239
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.175 alpha= 20.0558 beta= 27.0515
[1] 1240
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2114 alpha= 20.0932 beta= 27.0712
[1] 1241
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1467 alpha= 20.0692 beta= 27.0728
[1] 1242
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2192 alpha= 20.1586 beta= 27.0772
[1] 1243
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1209 alpha= 20.23 beta= 27.054
[1] 1244
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.3724 alpha= 20.3948 beta= 27.0311
[1] 1245
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0755 alpha= 20.2158 beta= 27.0348
[1] 1246
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1221 alpha= 20.2499 beta= 27.0427
[1] 1247
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1219 alpha= 20.2823 beta= 27.0362
[1] 1248
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0225 alpha= 20.3887 beta= 27.0455
[1] 1249
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.9668 alpha= 20.3051 beta= 27.0153
[1] 1250
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1607 alpha= 20.0565 beta= 27.0032
[1] 1251
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2149 alpha= 20.0292 beta= 26.9795
[1] 1252
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2958 alpha= 19.9572 beta= 26.9822
[1] 1253
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4002 alpha= 19.9241 beta= 26.9827
[1] 1254
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4091 alpha= 19.8543 beta= 26.9746
[1] 1255
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5048 alpha= 19.8125 beta= 26.9886
[1] 1256
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5033 alpha= 19.8533 beta= 27.0036
[1] 1257
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4768 alpha= 19.8355 beta= 26.9924
[1] 1258
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4029 alpha= 19.903 beta= 26.9838
[1] 1259
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4774 alpha= 19.9053 beta= 26.9771
[1] 1260
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4649 alpha= 19.8654 beta= 27.0009
[1] 1261
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4429 alpha= 19.9146 beta= 27.0009
[1] 1262
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3688 alpha= 19.9113 beta= 27.001
[1] 1263
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3247 alpha= 19.9854 beta= 26.985
[1] 1264
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3551 alpha= 20.0231 beta= 26.9891
[1] 1265
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2339 alpha= 20.133 beta= 27.0196
[1] 1266
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2947 alpha= 20.1307 beta= 27.001
[1] 1267
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2723 alpha= 20.1732 beta= 26.9254
[1] 1268
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2475 alpha= 20.0988 beta= 26.8312
[1] 1269
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2133 alpha= 20.1437 beta= 26.814
[1] 1270
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1837 alpha= 19.9952 beta= 26.7605
[1] 1271
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1424 alpha= 19.9994 beta= 26.736
[1] 1272
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2564 alpha= 19.8695 beta= 26.5477
[1] 1273
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2418 alpha= 19.8712 beta= 26.5271
[1] 1274
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.1878 alpha= 19.9021 beta= 26.519
[1] 1275
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2957 alpha= 19.7596 beta= 26.4813
[1] 1276
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2453 alpha= 19.653 beta= 26.4963
[1] 1277
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2999 alpha= 19.6994 beta= 26.4928
[1] 1278
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3136 alpha= 19.6947 beta= 26.4979
[1] 1279
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2756 alpha= 19.6654 beta= 26.5096
[1] 1280
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.443 alpha= 19.6701 beta= 26.4699
[1] 1281
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4001 alpha= 19.6396 beta= 26.4856
[1] 1282
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4036 alpha= 19.6682 beta= 26.4769
[1] 1283
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4065 alpha= 19.6593 beta= 26.4776
[1] 1284
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4214 alpha= 19.7518 beta= 26.4524
[1] 1285
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3927 alpha= 19.7022 beta= 26.4568
[1] 1286
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3756 alpha= 19.7189 beta= 26.4499
[1] 1287
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3778 alpha= 19.7257 beta= 26.4592
[1] 1288
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2622 alpha= 19.7374 beta= 26.4387
[1] 1289
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2989 alpha= 19.7894 beta= 26.411
[1] 1290
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2512 alpha= 19.7637 beta= 26.4162
[1] 1291
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2827 alpha= 19.7271 beta= 26.4401
[1] 1292
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2244 alpha= 19.7786 beta= 26.419
[1] 1293
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2248 alpha= 19.7431 beta= 26.3601
[1] 1294
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3024 alpha= 19.8202 beta= 26.3537
[1] 1295
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2992 alpha= 19.7657 beta= 26.3455
[1] 1296
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2061 alpha= 19.742 beta= 26.2898
[1] 1297
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2656 alpha= 19.6722 beta= 26.3795
[1] 1298
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2829 alpha= 19.7574 beta= 26.3821
[1] 1299
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2339 alpha= 19.7393 beta= 26.3809
[1] 1300
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3072 alpha= 19.7481 beta= 26.3794
[1] 1301
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3726 alpha= 19.7045 beta= 26.3658
[1] 1302
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3361 alpha= 19.676 beta= 26.3479
[1] 1303
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2771 alpha= 19.6527 beta= 26.3485
[1] 1304
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3091 alpha= 19.5837 beta= 26.353
[1] 1305
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.317 alpha= 19.6063 beta= 26.2645
[1] 1306
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3523 alpha= 19.5748 beta= 26.2894
[1] 1307
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3202 alpha= 19.5538 beta= 26.3237
[1] 1308
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4409 alpha= 19.4529 beta= 26.3211
[1] 1309
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4095 alpha= 19.3344 beta= 26.2267
[1] 1310
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3999 alpha= 19.3069 beta= 26.2075
[1] 1311
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4962 alpha= 19.3083 beta= 26.2909
[1] 1312
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4795 alpha= 19.331 beta= 26.2726
[1] 1313
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4868 alpha= 19.3478 beta= 26.2701
[1] 1314
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4852 alpha= 19.3694 beta= 26.2485
[1] 1315
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4919 alpha= 19.2877 beta= 26.2053
[1] 1316
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4117 alpha= 19.2792 beta= 26.2002
[1] 1317
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.605 alpha= 19.2167 beta= 26.2575
[1] 1318
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5789 alpha= 19.2018 beta= 26.3154
[1] 1319
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6025 alpha= 19.2793 beta= 26.3148
[1] 1320
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5599 alpha= 19.2466 beta= 26.3188
[1] 1321
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.565 alpha= 19.2496 beta= 26.3381
[1] 1322
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.627 alpha= 19.2693 beta= 26.3368
[1] 1323
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4928 alpha= 19.211 beta= 26.3299
[1] 1324
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.501 alpha= 19.2231 beta= 26.3417
[1] 1325
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5832 alpha= 19.2068 beta= 26.3501
[1] 1326
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5358 alpha= 19.2102 beta= 26.3479
[1] 1327
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5585 alpha= 19.2174 beta= 26.3225
[1] 1328
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4529 alpha= 19.2475 beta= 26.3418
[1] 1329
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4374 alpha= 19.2713 beta= 26.3224
[1] 1330
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.522 alpha= 19.2524 beta= 26.3214
[1] 1331
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4192 alpha= 19.258 beta= 26.314
[1] 1332
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4748 alpha= 19.16 beta= 26.334
[1] 1333
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5283 alpha= 19.2178 beta= 26.3208
[1] 1334
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5232 alpha= 19.2924 beta= 26.3109
[1] 1335
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4181 alpha= 19.1933 beta= 26.2947
[1] 1336
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4241 alpha= 19.2548 beta= 26.2941
[1] 1337
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4359 alpha= 19.2494 beta= 26.4033
[1] 1338
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4875 alpha= 19.3625 beta= 26.3794
[1] 1339
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4458 alpha= 19.4296 beta= 26.3454
[1] 1340
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4132 alpha= 19.4429 beta= 26.3591
[1] 1341
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3085 alpha= 19.4054 beta= 26.3644
[1] 1342
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3959 alpha= 19.4353 beta= 26.386
[1] 1343
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3285 alpha= 19.3605 beta= 26.4002
[1] 1344
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3356 alpha= 19.3277 beta= 26.407
[1] 1345
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3431 alpha= 19.3378 beta= 26.3924
[1] 1346
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.433 alpha= 19.3292 beta= 26.4066
[1] 1347
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4298 alpha= 19.3441 beta= 26.4097
[1] 1348
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3246 alpha= 19.27 beta= 26.3432
[1] 1349
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4185 alpha= 19.305 beta= 26.3455
[1] 1350
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4127 alpha= 19.3188 beta= 26.3517
[1] 1351
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3075 alpha= 19.3072 beta= 26.3551
[1] 1352
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3079 alpha= 19.3008 beta= 26.3555
[1] 1353
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3444 alpha= 19.3743 beta= 26.3392
[1] 1354
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3169 alpha= 19.3311 beta= 26.2877
[1] 1355
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3496 alpha= 19.3028 beta= 26.2996
[1] 1356
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2833 alpha= 19.252 beta= 26.3025
[1] 1357
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3004 alpha= 19.3278 beta= 26.3703
[1] 1358
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2357 alpha= 19.2956 beta= 26.3755
[1] 1359
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2247 alpha= 19.3032 beta= 26.349
[1] 1360
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2218 alpha= 19.2738 beta= 26.3725
[1] 1361
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2979 alpha= 19.0729 beta= 26.3686
[1] 1362
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2557 alpha= 19.2359 beta= 26.3603
[1] 1363
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2241 alpha= 19.2547 beta= 26.3591
[1] 1364
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4366 alpha= 18.995 beta= 26.6241
[1] 1365
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4206 alpha= 19.0416 beta= 26.6606
[1] 1366
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.43 alpha= 19.0098 beta= 26.6754
[1] 1367
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4323 alpha= 18.94 beta= 26.5379
[1] 1368
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4143 alpha= 18.947 beta= 26.533
[1] 1369
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3777 alpha= 19.0312 beta= 26.5419
[1] 1370
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3914 alpha= 18.9665 beta= 26.5696
[1] 1371
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.398 alpha= 18.9483 beta= 26.5747
[1] 1372
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4055 alpha= 18.9164 beta= 26.5855
[1] 1373
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3955 alpha= 18.9542 beta= 26.5823
[1] 1374
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3372 alpha= 19.0496 beta= 26.5786
[1] 1375
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3976 alpha= 18.8731 beta= 26.5648
[1] 1376
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.362 alpha= 18.9078 beta= 26.5698
[1] 1377
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3903 alpha= 18.9509 beta= 26.549
[1] 1378
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3358 alpha= 19.0211 beta= 26.5621
[1] 1379
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3801 alpha= 18.952 beta= 26.5529
[1] 1380
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4072 alpha= 18.8979 beta= 26.5488
[1] 1381
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.397 alpha= 18.9215 beta= 26.5522
[1] 1382
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4054 alpha= 18.9345 beta= 26.5517
[1] 1383
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4044 alpha= 18.9549 beta= 26.5534
[1] 1384
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4509 alpha= 18.8643 beta= 26.5469
[1] 1385
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5103 alpha= 18.724 beta= 26.5213
[1] 1386
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6491 alpha= 18.4337 beta= 26.5238
[1] 1387
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.744 alpha= 18.2407 beta= 26.5737
[1] 1388
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 64.308 alpha= 9.3999 beta= 27.6812
[1] 1389
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8688 alpha= 18.005 beta= 26.5685
[1] 1390
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9006 alpha= 17.9556 beta= 26.5792
[1] 1391
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8413 alpha= 18.0691 beta= 26.5821
[1] 1392
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8172 alpha= 18.0543 beta= 26.5353
[1] 1393
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.867 alpha= 17.9742 beta= 26.5288
[1] 1394
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8091 alpha= 18.0806 beta= 26.5243
[1] 1395
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8872 alpha= 17.9524 beta= 26.5276
[1] 1396
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8957 alpha= 17.919 beta= 26.5369
[1] 1397
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9354 alpha= 17.8525 beta= 26.5378
[1] 1398
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.0454 alpha= 17.5346 beta= 26.2399
[1] 1399
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9974 alpha= 17.4942 beta= 26.0821
[1] 1400
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.1231 alpha= 17.2309 beta= 26.0363
[1] 1401
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.0257 alpha= 17.3941 beta= 25.9593
[1] 1402
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.5818 alpha= 16.5588 beta= 25.9821
[1] 1403
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.3042 alpha= 16.9078 beta= 25.9845
[1] 1404
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 45.1091 alpha= 11.5632 beta= 26.5402
[1] 1405
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.5579 alpha= 16.6154 beta= 26.0263
[1] 1406
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 45.3124 alpha= 11.4848 beta= 26.5796
[1] 1407
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 45.3939 alpha= 11.4538 beta= 26.6016
[1] 1408
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.6675 alpha= 16.3301 beta= 26.0078
[1] 1409
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.7142 alpha= 16.3339 beta= 26.0081
[1] 1410
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.5553 alpha= 16.5619 beta= 26.0003
[1] 1411
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 45.1948 alpha= 11.4784 beta= 26.5319
[1] 1412
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 45.036 alpha= 11.5059 beta= 26.5216
[1] 1413
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.7447 alpha= 16.3308 beta= 25.9875
[1] 1414
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.7645 alpha= 16.2723 beta= 25.9729
[1] 1415
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.2726 alpha= 16.9961 beta= 25.9413
[1] 1416
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9991 alpha= 17.3802 beta= 25.9167
[1] 1417
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.1575 alpha= 17.1344 beta= 25.9189
[1] 1418
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.0964 alpha= 17.2523 beta= 25.9188
[1] 1419
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.0869 alpha= 17.2688 beta= 25.931
[1] 1420
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 45.1226 alpha= 11.5404 beta= 26.4875
[1] 1421
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.0395 alpha= 17.3574 beta= 25.926
[1] 1422
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 45.335 alpha= 11.4666 beta= 26.4394
[1] 1423
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.3541 alpha= 16.8858 beta= 25.8965
[1] 1424
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.43 alpha= 16.7157 beta= 25.8752
[1] 1425
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.2944 alpha= 16.8704 beta= 25.8458
[1] 1426
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.5557 alpha= 16.5868 beta= 25.8602
[1] 1427
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.5556 alpha= 16.5261 beta= 25.8737
[1] 1428
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 45.8802 alpha= 11.2683 beta= 26.4599
[1] 1429
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 45.8327 alpha= 11.2754 beta= 26.4436
[1] 1430
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 44.6516 alpha= 11.4381 beta= 26.0406
[1] 1431
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 44.4854 alpha= 11.4458 beta= 25.9412
[1] 1432
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 44.6813 alpha= 11.4221 beta= 25.905
[1] 1433
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.6379 alpha= 16.2151 beta= 25.3851
[1] 1434
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 44.6986 alpha= 11.42 beta= 25.8916
[1] 1435
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 44.9025 alpha= 11.3975 beta= 25.9152
[1] 1436
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 44.4701 alpha= 11.5008 beta= 25.7416
[1] 1437
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4557 alpha= 16.5133 beta= 25.2355
[1] 1438
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 44.5947 alpha= 11.4742 beta= 25.7636
[1] 1439
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 44.8949 alpha= 11.4029 beta= 25.7261
[1] 1440
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 44.8409 alpha= 11.4292 beta= 25.7051
[1] 1441
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 44.9989 alpha= 11.3871 beta= 25.7129
[1] 1442
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 44.8302 alpha= 11.4189 beta= 25.618
[1] 1443
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 44.866 alpha= 11.4085 beta= 25.6283
[1] 1444
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 44.8728 alpha= 11.4034 beta= 25.6331
[1] 1445
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 44.7565 alpha= 11.3751 beta= 25.6381
[1] 1446
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 44.711 alpha= 11.3852 beta= 25.6392
[1] 1447
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.5782 alpha= 16.2268 beta= 25.1008
[1] 1448
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.5456 alpha= 16.2494 beta= 25.0947
[1] 1449
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 44.6644 alpha= 11.2339 beta= 25.5895
[1] 1450
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.3676 alpha= 16.572 beta= 25.0747
[1] 1451
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.2401 alpha= 16.7319 beta= 25.0085
[1] 1452
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4108 alpha= 16.4747 beta= 24.9825
[1] 1453
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4775 alpha= 16.4275 beta= 24.9836
[1] 1454
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.554 alpha= 16.343 beta= 25.0306
[1] 1455
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 65.4748 alpha= 9.0041 beta= 26.0827
[1] 1456
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.3692 alpha= 16.5927 beta= 25.0233
[1] 1457
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.3284 alpha= 16.6454 beta= 25.0113
[1] 1458
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.3781 alpha= 16.6163 beta= 25.0069
[1] 1459
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.3037 alpha= 16.6791 beta= 24.9976
[1] 1460
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4573 alpha= 16.4601 beta= 25.0342
[1] 1461
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.6387 alpha= 16.2304 beta= 25.0572
[1] 1462
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4587 alpha= 16.4624 beta= 25.0647
[1] 1463
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.3635 alpha= 16.6956 beta= 25.1179
[1] 1464
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.221 alpha= 16.9291 beta= 25.0988
[1] 1465
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4199 alpha= 16.5634 beta= 25.085
[1] 1466
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.5542 alpha= 16.3993 beta= 25.0898
[1] 1467
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.3812 alpha= 16.5742 beta= 24.9937
[1] 1468
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6904 alpha= 20.9682 beta= 24.7604
[1] 1469
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9211 alpha= 17.3074 beta= 24.8709
[1] 1470
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.1912 alpha= 16.4212 beta= 24.2106
[1] 1471
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9022 alpha= 20.5064 beta= 23.9355
[1] 1472
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8803 alpha= 16.8105 beta= 24.1024
[1] 1473
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6164 alpha= 20.643 beta= 23.8543
[1] 1474
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6798 alpha= 20.6544 beta= 23.8481
[1] 1475
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9069 alpha= 16.6812 beta= 23.9225
[1] 1476
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6533 alpha= 20.4641 beta= 23.6782
[1] 1477
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6698 alpha= 20.4183 beta= 23.6424
[1] 1478
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6749 alpha= 20.4049 beta= 23.6367
[1] 1479
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6444 alpha= 16.9956 beta= 23.7899
[1] 1480
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7595 alpha= 16.8265 beta= 23.8045
[1] 1481
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6687 alpha= 16.9437 beta= 23.7997
[1] 1482
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7595 alpha= 20.2194 beta= 23.6532
[1] 1483
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4071 alpha= 17.3632 beta= 23.8143
[1] 1484
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3308 alpha= 17.4395 beta= 23.7955
[1] 1485
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6958 alpha= 20.2723 beta= 23.6729
[1] 1486
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7196 alpha= 20.252 beta= 23.6734
[1] 1487
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7414 alpha= 20.2053 beta= 23.7247
[1] 1488
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7859 alpha= 20.1707 beta= 23.8004
[1] 1489
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7804 alpha= 20.2824 beta= 23.6759
[1] 1490
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6541 alpha= 20.2765 beta= 23.6325
[1] 1491
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7724 alpha= 16.9094 beta= 23.7826
[1] 1492
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9584 alpha= 16.7567 beta= 23.8401
[1] 1493
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7806 alpha= 20.2223 beta= 23.6609
[1] 1494
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5741 alpha= 20.3848 beta= 23.5128
[1] 1495
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7561 alpha= 20.2581 beta= 23.4744
[1] 1496
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2714 alpha= 17.5968 beta= 23.5879
[1] 1497
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6809 alpha= 20.2554 beta= 23.4761
[1] 1498
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7044 alpha= 20.0996 beta= 23.5422
[1] 1499
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3313 alpha= 17.4954 beta= 23.6668
[1] 1500
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4648 alpha= 17.3164 beta= 23.6485
[1] 1501
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2666 alpha= 17.5922 beta= 23.6432
[1] 1502
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6093 alpha= 20.3088 beta= 23.4954
[1] 1503
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2338 alpha= 17.6385 beta= 23.6234
[1] 1504
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5946 alpha= 20.2492 beta= 23.4746
[1] 1505
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5829 alpha= 20.2687 beta= 23.3782
[1] 1506
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5859 alpha= 20.2695 beta= 23.3682
[1] 1507
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5556 alpha= 17.0249 beta= 23.5085
[1] 1508
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8221 alpha= 16.7152 beta= 23.52
[1] 1509
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8076 alpha= 16.679 beta= 23.5181
[1] 1510
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9985 alpha= 16.3987 beta= 23.5325
[1] 1511
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8324 alpha= 16.6416 beta= 23.5541
[1] 1512
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7801 alpha= 20.0554 beta= 23.3807
[1] 1513
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6445 alpha= 20.1226 beta= 23.3816
[1] 1514
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.1434 alpha= 16.2358 beta= 23.5699
[1] 1515
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.0556 alpha= 16.3935 beta= 23.5685
[1] 1516
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.2156 alpha= 16.1206 beta= 23.5594
[1] 1517
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9517 alpha= 19.8991 beta= 23.3475
[1] 1518
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7178 alpha= 19.918 beta= 23.3397
[1] 1519
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.436 alpha= 15.8032 beta= 23.4627
[1] 1520
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.2933 alpha= 15.9932 beta= 23.5019
[1] 1521
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.0446 alpha= 16.2939 beta= 23.4963
[1] 1522
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.2886 alpha= 15.9596 beta= 23.4582
[1] 1523
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.052 alpha= 16.2319 beta= 23.4317
[1] 1524
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7138 alpha= 19.8798 beta= 23.2345
[1] 1525
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6377 alpha= 16.8842 beta= 23.3795
[1] 1526
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5872 alpha= 16.9695 beta= 23.4123
[1] 1527
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6344 alpha= 16.9135 beta= 23.4107
[1] 1528
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8716 alpha= 16.5232 beta= 23.4413
[1] 1529
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9058 alpha= 16.468 beta= 23.4578
[1] 1530
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7088 alpha= 19.9227 beta= 23.077
[1] 1531
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5892 alpha= 16.815 beta= 23.1922
[1] 1532
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6681 alpha= 19.9284 beta= 23.0527
[1] 1533
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6704 alpha= 19.9307 beta= 23.0615
[1] 1534
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5847 alpha= 16.8833 beta= 23.1934
[1] 1535
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6522 alpha= 20.0324 beta= 23.0269
[1] 1536
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4809 alpha= 17.0617 beta= 23.1705
[1] 1537
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6882 alpha= 19.8862 beta= 23.0278
[1] 1538
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.0544 alpha= 16.2887 beta= 23.2208
[1] 1539
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.1112 alpha= 16.2294 beta= 23.2272
[1] 1540
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7644 alpha= 19.794 beta= 23.0516
[1] 1541
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.867 alpha= 16.5718 beta= 23.2223
[1] 1542
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8648 alpha= 19.6896 beta= 23.0622
[1] 1543
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7283 alpha= 19.7541 beta= 23.0629
[1] 1544
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3579 alpha= 19.3756 beta= 23.0747
[1] 1545
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8159 alpha= 16.5396 beta= 23.2266
[1] 1546
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8325 alpha= 19.6721 beta= 23.073
[1] 1547
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9446 alpha= 16.3853 beta= 23.2241
[1] 1548
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8107 alpha= 19.723 beta= 23.0539
[1] 1549
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7898 alpha= 19.7436 beta= 23.0503
[1] 1550
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7943 alpha= 16.5277 beta= 23.1561
[1] 1551
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8695 alpha= 16.4217 beta= 23.16
[1] 1552
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8186 alpha= 16.5949 beta= 23.1541
[1] 1553
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.678 alpha= 19.8739 beta= 22.9918
[1] 1554
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8066 alpha= 16.5262 beta= 23.1577
[1] 1555
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7292 alpha= 16.5984 beta= 23.133
[1] 1556
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7989 alpha= 19.7895 beta= 22.9851
[1] 1557
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7236 alpha= 19.8054 beta= 22.999
[1] 1558
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6335 alpha= 16.6977 beta= 23.1289
[1] 1559
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.6881 alpha= 16.7386 beta= 23.1263
[1] 1560
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7248 alpha= 19.8223 beta= 22.9934
[1] 1561
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.841 alpha= 19.8117 beta= 22.9898
[1] 1562
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.8687 alpha= 16.3911 beta= 23.1444
[1] 1563
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.677 alpha= 19.8437 beta= 22.9801
[1] 1564
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.7779 alpha= 16.6607 beta= 23.1214
[1] 1565
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7199 alpha= 19.8007 beta= 22.7553
[1] 1566
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.3405 alpha= 17.0913 beta= 22.8838
[1] 1567
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.5024 alpha= 16.9768 beta= 22.987
[1] 1568
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6611 alpha= 20.2568 beta= 22.829
[1] 1569
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4099 alpha= 17.0128 beta= 22.9211
[1] 1570
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2532 alpha= 17.2527 beta= 22.9081
[1] 1571
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.2648 alpha= 17.2595 beta= 22.8984
[1] 1572
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4982 alpha= 20.0848 beta= 22.7133
[1] 1573
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5032 alpha= 20.0747 beta= 22.7259
[1] 1574
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4453 alpha= 20.2317 beta= 22.7783
[1] 1575
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4672 alpha= 20.1979 beta= 22.8443
[1] 1576
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.4359 alpha= 17.0951 beta= 23.0232
[1] 1577
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5461 alpha= 20.1566 beta= 22.7152
[1] 1578
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5731 alpha= 20.1862 beta= 22.7202
[1] 1579
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.3922 alpha= 15.4986 beta= 22.3238
[1] 1580
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4477 alpha= 15.4445 beta= 22.3568
[1] 1581
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.7417 alpha= 15.1117 beta= 22.358
[1] 1582
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.7111 alpha= 15.2325 beta= 22.2336
[1] 1583
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4314 alpha= 15.4895 beta= 22.1986
[1] 1584
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2592 alpha= 20.3194 beta= 21.9546
[1] 1585
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.326 alpha= 20.1816 beta= 21.9396
[1] 1586
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2957 alpha= 20.2653 beta= 22.0023
[1] 1587
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.5107 alpha= 15.4171 beta= 22.2148
[1] 1588
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.2079 alpha= 15.7998 beta= 22.195
[1] 1589
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4255 alpha= 15.5443 beta= 22.0546
[1] 1590
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1703 alpha= 20.4384 beta= 21.8173
[1] 1591
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.1477 alpha= 15.872 beta= 22.0293
[1] 1592
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4604 alpha= 15.4643 beta= 21.8948
[1] 1593
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2619 alpha= 20.2472 beta= 21.6339
[1] 1594
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.5245 alpha= 15.3839 beta= 21.8691
[1] 1595
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.5099 alpha= 15.4119 beta= 21.8631
[1] 1596
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.6349 alpha= 15.2673 beta= 21.9135
[1] 1597
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.769 alpha= 15.1022 beta= 21.9027
[1] 1598
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.5586 alpha= 15.3217 beta= 21.8913
[1] 1599
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.573 alpha= 15.3197 beta= 21.8011
[1] 1600
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.7016 alpha= 15.2024 beta= 21.7774
[1] 1601
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4539 alpha= 15.3929 beta= 21.7651
[1] 1602
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4917 alpha= 15.3389 beta= 21.772
[1] 1603
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.7211 alpha= 15.1102 beta= 21.7227
[1] 1604
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.608 alpha= 15.1828 beta= 21.72
[1] 1605
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.6437 alpha= 15.1638 beta= 21.7206
[1] 1606
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.5785 alpha= 15.2214 beta= 21.7116
[1] 1607
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.5174 alpha= 15.2838 beta= 21.7085
[1] 1608
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.669 alpha= 15.1425 beta= 21.7272
[1] 1609
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2686 alpha= 20.1227 beta= 21.4526
[1] 1610
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2761 alpha= 20.074 beta= 21.3498
[1] 1611
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.9001 alpha= 14.8253 beta= 21.6489
[1] 1612
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.6302 alpha= 15.0874 beta= 21.6271
[1] 1613
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.6667 alpha= 15.06 beta= 21.6901
[1] 1614
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.7268 alpha= 15.0168 beta= 21.6969
[1] 1615
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4264 alpha= 15.3273 beta= 21.6695
[1] 1616
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3876 alpha= 19.8842 beta= 21.328
[1] 1617
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2907 alpha= 19.8808 beta= 21.3207
[1] 1618
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.6636 alpha= 14.9999 beta= 21.5196
[1] 1619
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.266 alpha= 19.8876 beta= 21.2866
[1] 1620
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3076 alpha= 19.8707 beta= 21.2865
[1] 1621
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.9652 alpha= 14.6675 beta= 21.5234
[1] 1622
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3195 alpha= 19.7756 beta= 21.2689
[1] 1623
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4296 alpha= 19.6638 beta= 21.2533
[1] 1624
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.8955 alpha= 14.658 beta= 21.5233
[1] 1625
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.9665 alpha= 14.5562 beta= 21.4959
[1] 1626
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.9225 alpha= 14.5701 beta= 21.5076
[1] 1627
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.9415 alpha= 14.5374 beta= 21.5053
[1] 1628
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 32.2081 alpha= 14.2584 beta= 21.5117
[1] 1629
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 32.031 alpha= 14.4387 beta= 21.4997
[1] 1630
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4116 alpha= 19.4721 beta= 21.1762
[1] 1631
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.9932 alpha= 14.4366 beta= 21.4245
[1] 1632
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3937 alpha= 19.486 beta= 21.1645
[1] 1633
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 32.1592 alpha= 14.2396 beta= 21.4241
[1] 1634
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4284 alpha= 19.3929 beta= 21.1449
[1] 1635
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 32.1648 alpha= 14.1964 beta= 21.3937
[1] 1636
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 32.6354 alpha= 13.7776 beta= 21.4667
[1] 1637
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 32.483 alpha= 13.9116 beta= 21.4479
[1] 1638
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 32.4778 alpha= 13.9145 beta= 21.4628
[1] 1639
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4759 alpha= 19.3555 beta= 21.1476
[1] 1640
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 32.4098 alpha= 13.9374 beta= 21.3871
[1] 1641
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4015 alpha= 19.5103 beta= 21.1064
[1] 1642
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 39.498 alpha= 11.8033 beta= 21.5814
[1] 1643
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4318 alpha= 19.3638 beta= 21.1397
[1] 1644
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 32.2541 alpha= 14.0695 beta= 21.3852
[1] 1645
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 32.3137 alpha= 13.9921 beta= 21.313
[1] 1646
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.48 alpha= 19.4125 beta= 20.9683
[1] 1647
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4549 alpha= 19.4285 beta= 20.9603
[1] 1648
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3181 alpha= 19.5233 beta= 20.923
[1] 1649
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 32.2014 alpha= 14.0234 beta= 21.1778
[1] 1650
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4552 alpha= 19.4329 beta= 20.9219
[1] 1651
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3381 alpha= 19.4831 beta= 20.9125
[1] 1652
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3195 alpha= 19.5204 beta= 20.8976
[1] 1653
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4147 alpha= 19.5059 beta= 20.8952
[1] 1654
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 32.0969 alpha= 14.1161 beta= 21.153
[1] 1655
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.216 alpha= 19.7158 beta= 20.8171
[1] 1656
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2836 alpha= 19.6401 beta= 20.8185
[1] 1657
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2987 alpha= 19.7514 beta= 20.8204
[1] 1658
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3508 alpha= 19.6767 beta= 20.7959
[1] 1659
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2313 alpha= 19.6717 beta= 20.8
[1] 1660
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2372 alpha= 19.6531 beta= 20.7839
[1] 1661
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2291 alpha= 19.6548 beta= 20.7403
[1] 1662
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.145 alpha= 19.7765 beta= 20.6476
[1] 1663
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1555 alpha= 19.7305 beta= 20.6198
[1] 1664
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1483 alpha= 19.737 beta= 20.6061
[1] 1665
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.7636 alpha= 14.3337 beta= 20.8619
[1] 1666
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1849 alpha= 19.6557 beta= 20.5955
[1] 1667
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1617 alpha= 19.653 beta= 20.5306
[1] 1668
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2205 alpha= 19.5198 beta= 20.5185
[1] 1669
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2319 alpha= 19.4859 beta= 20.5105
[1] 1670
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2361 alpha= 19.4966 beta= 20.5307
[1] 1671
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2396 alpha= 19.4697 beta= 20.5397
[1] 1672
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.8196 alpha= 14.1804 beta= 20.7706
[1] 1673
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2577 alpha= 19.4264 beta= 20.5412
[1] 1674
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2261 alpha= 19.4911 beta= 20.5277
[1] 1675
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 31.4324 alpha= 14.585 beta= 20.7531
[1] 1676
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1539 alpha= 19.6153 beta= 20.4917
[1] 1677
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1757 alpha= 19.5922 beta= 20.4694
[1] 1678
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.197 alpha= 19.5053 beta= 20.4462
[1] 1679
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1646 alpha= 19.5533 beta= 20.4497
[1] 1680
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1625 alpha= 19.5491 beta= 20.4514
[1] 1681
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1615 alpha= 19.5344 beta= 20.4397
[1] 1682
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1567 alpha= 19.5658 beta= 20.4326
[1] 1683
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1404 alpha= 19.5699 beta= 20.4329
[1] 1684
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1557 alpha= 19.5357 beta= 20.4073
[1] 1685
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0766 alpha= 19.6624 beta= 20.3672
[1] 1686
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1343 alpha= 18.8486 beta= 18.6231
[1] 1687
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1638 alpha= 18.8413 beta= 18.6261
[1] 1688
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2297 alpha= 18.7081 beta= 18.6292
[1] 1689
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.204 alpha= 18.7495 beta= 18.6293
[1] 1690
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1626 alpha= 18.8173 beta= 18.6503
[1] 1691
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1418 alpha= 18.8063 beta= 18.6503
[1] 1692
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1358 alpha= 18.7864 beta= 18.5997
[1] 1693
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1659 alpha= 18.6876 beta= 18.5862
[1] 1694
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1863 alpha= 18.5424 beta= 18.4135
[1] 1695
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1274 alpha= 18.6557 beta= 18.3703
[1] 1696
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1141 alpha= 18.6843 beta= 18.3666
[1] 1697
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1173 alpha= 18.6335 beta= 18.3208
[1] 1698
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1386 alpha= 18.5739 beta= 18.3075
[1] 1699
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1521 alpha= 18.5497 beta= 18.3198
[1] 1700
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2358 alpha= 18.444 beta= 18.3245
[1] 1701
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1983 alpha= 18.4731 beta= 18.3266
[1] 1702
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1602 alpha= 18.5513 beta= 18.3113
[1] 1703
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2176 alpha= 18.5086 beta= 18.3397
[1] 1704
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1967 alpha= 18.5413 beta= 18.3249
[1] 1705
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.212 alpha= 18.4882 beta= 18.3389
[1] 1706
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1922 alpha= 18.5038 beta= 18.3296
[1] 1707
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1965 alpha= 18.4912 beta= 18.2967
[1] 1708
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1356 alpha= 18.5913 beta= 18.2844
[1] 1709
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1451 alpha= 18.5789 beta= 18.2868
[1] 1710
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1189 alpha= 18.6397 beta= 18.289
[1] 1711
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1564 alpha= 18.5632 beta= 18.2773
[1] 1712
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1353 alpha= 18.5407 beta= 18.2888
[1] 1713
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0928 alpha= 18.6048 beta= 18.2845
[1] 1714
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1203 alpha= 18.5507 beta= 18.2604
[1] 1715
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1188 alpha= 18.6224 beta= 18.2421
[1] 1716
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1536 alpha= 18.5545 beta= 18.2252
[1] 1717
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1344 alpha= 18.5565 beta= 18.1652
[1] 1718
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1514 alpha= 18.5336 beta= 18.1715
[1] 1719
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2134 alpha= 18.4 beta= 18.1335
[1] 1720
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2111 alpha= 18.4078 beta= 18.1602
[1] 1721
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3152 alpha= 18.2087 beta= 18.2046
[1] 1722
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3879 alpha= 18.0836 beta= 18.2832
[1] 1723
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4147 alpha= 17.9998 beta= 18.2374
[1] 1724
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4254 alpha= 17.9499 beta= 18.1891
[1] 1725
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4062 alpha= 17.946 beta= 18.1582
[1] 1726
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3994 alpha= 17.9549 beta= 18.1568
[1] 1727
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3677 alpha= 17.9963 beta= 18.1273
[1] 1728
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3852 alpha= 17.9368 beta= 18.0887
[1] 1729
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3707 alpha= 17.9315 beta= 18.0678
[1] 1730
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3539 alpha= 17.9515 beta= 18.0741
[1] 1731
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3536 alpha= 17.9364 beta= 18.0352
[1] 1732
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.324 alpha= 18.006 beta= 18.0611
[1] 1733
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3189 alpha= 17.9981 beta= 18.0562
[1] 1734
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3192 alpha= 17.9949 beta= 18.0555
[1] 1735
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3177 alpha= 18.0226 beta= 18.1054
[1] 1736
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3245 alpha= 18.006 beta= 18.0494
[1] 1737
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3364 alpha= 18.0153 beta= 18.0473
[1] 1738
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3236 alpha= 18.0287 beta= 18.0428
[1] 1739
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4535 alpha= 17.8144 beta= 18.0246
[1] 1740
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5441 alpha= 17.6651 beta= 17.9962
[1] 1741
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5175 alpha= 17.6067 beta= 17.9954
[1] 1742
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5238 alpha= 17.6016 beta= 17.9746
[1] 1743
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5321 alpha= 17.9255 beta= 18.6316
[1] 1744
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5829 alpha= 17.7285 beta= 18.6257
[1] 1745
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.9387 alpha= 14.3142 beta= 18.7972
[1] 1746
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4354 alpha= 17.8474 beta= 18.5534
[1] 1747
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4594 alpha= 17.8023 beta= 18.5625
[1] 1748
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4668 alpha= 17.7853 beta= 18.5664
[1] 1749
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4861 alpha= 17.7433 beta= 18.5737
[1] 1750
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4841 alpha= 17.7506 beta= 18.5895
[1] 1751
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5522 alpha= 17.6112 beta= 18.636
[1] 1752
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6098 alpha= 17.5379 beta= 18.6587
[1] 1753
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6266 alpha= 17.4864 beta= 18.6822
[1] 1754
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 30.0932 alpha= 15.2889 beta= 18.7542
[1] 1755
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6289 alpha= 17.4558 beta= 18.6789
[1] 1756
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6415 alpha= 17.4368 beta= 18.6671
[1] 1757
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6475 alpha= 17.4512 beta= 18.6674
[1] 1758
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7321 alpha= 17.3743 beta= 18.6854
[1] 1759
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6952 alpha= 17.3246 beta= 18.7372
[1] 1760
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.742 alpha= 17.2968 beta= 18.7783
[1] 1761
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6922 alpha= 17.374 beta= 18.7577
[1] 1762
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7395 alpha= 17.3459 beta= 18.7724
[1] 1763
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7011 alpha= 17.2986 beta= 18.7725
[1] 1764
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6899 alpha= 17.3061 beta= 18.7348
[1] 1765
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.65 alpha= 17.3743 beta= 18.7458
[1] 1766
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6569 alpha= 17.3477 beta= 18.7532
[1] 1767
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6654 alpha= 17.3337 beta= 18.7432
[1] 1768
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6464 alpha= 17.3583 beta= 18.7967
[1] 1769
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.3562 alpha= 16.195 beta= 18.8511
[1] 1770
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6502 alpha= 17.3598 beta= 18.8019
[1] 1771
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.285 alpha= 16.2801 beta= 18.8316
[1] 1772
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6439 alpha= 17.3355 beta= 18.796
[1] 1773
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9574 alpha= 17.2817 beta= 18.786
[1] 1774
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6399 alpha= 17.3835 beta= 18.7875
[1] 1775
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5749 alpha= 17.6543 beta= 18.9601
[1] 1776
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5748 alpha= 17.6467 beta= 18.9681
[1] 1777
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5596 alpha= 17.6883 beta= 19.0158
[1] 1778
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.737 alpha= 17.5565 beta= 19.0485
[1] 1779
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6567 alpha= 17.6139 beta= 19.0263
[1] 1780
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5906 alpha= 17.5198 beta= 18.8288
[1] 1781
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7032 alpha= 17.3433 beta= 18.8742
[1] 1782
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0564 alpha= 16.5415 beta= 18.8982
[1] 1783
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0667 alpha= 16.529 beta= 18.8888
[1] 1784
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0837 alpha= 16.5186 beta= 18.9194
[1] 1785
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6704 alpha= 17.3615 beta= 18.8919
[1] 1786
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0795 alpha= 16.5062 beta= 18.9475
[1] 1787
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.645 alpha= 17.3839 beta= 18.8943
[1] 1788
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4907 alpha= 17.2059 beta= 18.9095
[1] 1789
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.631 alpha= 17.3899 beta= 18.8963
[1] 1790
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.599 alpha= 17.5071 beta= 18.9288
[1] 1791
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6018 alpha= 17.4688 beta= 18.9516
[1] 1792
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9804 alpha= 17.3518 beta= 18.9033
[1] 1793
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6758 alpha= 17.311 beta= 18.9209
[1] 1794
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.711 alpha= 17.2507 beta= 18.9167
[1] 1795
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9665 alpha= 17.1297 beta= 18.6526
[1] 1796
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7142 alpha= 17.15 beta= 18.6556
[1] 1797
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8401 alpha= 17.0053 beta= 18.6638
[1] 1798
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.612 alpha= 15.6965 beta= 18.7161
[1] 1799
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8958 alpha= 17.0309 beta= 18.6718
[1] 1800
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.667 alpha= 17.2109 beta= 18.5612
[1] 1801
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.568 alpha= 17.3931 beta= 18.5733
[1] 1802
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7318 alpha= 17.3101 beta= 18.677
[1] 1803
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5701 alpha= 17.4099 beta= 18.6522
[1] 1804
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5957 alpha= 17.3874 beta= 18.6514
[1] 1805
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5718 alpha= 17.3865 beta= 18.6488
[1] 1806
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5821 alpha= 17.3839 beta= 18.6474
[1] 1807
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.812 alpha= 17.3594 beta= 18.6138
[1] 1808
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.639 alpha= 17.4076 beta= 18.6166
[1] 1809
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5409 alpha= 17.4459 beta= 18.6432
[1] 1810
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9361 alpha= 16.6471 beta= 18.6801
[1] 1811
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9873 alpha= 17.3127 beta= 18.6515
[1] 1812
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5255 alpha= 17.3575 beta= 18.6754
[1] 1813
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4181 alpha= 17.6465 beta= 18.7419
[1] 1814
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4686 alpha= 17.4712 beta= 18.7687
[1] 1815
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5295 alpha= 17.3682 beta= 18.7677
[1] 1816
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6992 alpha= 17.3024 beta= 18.8248
[1] 1817
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7463 alpha= 17.1023 beta= 18.8448
[1] 1818
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8677 alpha= 16.6734 beta= 18.8841
[1] 1819
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.7934 alpha= 16.7665 beta= 18.7352
[1] 1820
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.9552 alpha= 16.5973 beta= 18.7361
[1] 1821
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.2066 alpha= 16.2561 beta= 18.692
[1] 1822
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7163 alpha= 16.887 beta= 18.602
[1] 1823
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 29.0077 alpha= 16.4402 beta= 18.5841
[1] 1824
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.8864 alpha= 16.6469 beta= 18.5541
[1] 1825
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7768 alpha= 17.1249 beta= 18.5431
[1] 1826
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.77 alpha= 16.7828 beta= 18.5156
[1] 1827
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3438 alpha= 17.1543 beta= 18.4271
[1] 1828
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.467 alpha= 17.4004 beta= 18.4206
[1] 1829
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6099 alpha= 17.3554 beta= 18.4313
[1] 1830
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0995 alpha= 17.3034 beta= 18.4345
[1] 1831
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2854 alpha= 17.2166 beta= 18.4144
[1] 1832
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1053 alpha= 17.3957 beta= 18.3412
[1] 1833
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4677 alpha= 17.1415 beta= 18.3562
[1] 1834
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4338 alpha= 17.432 beta= 18.3395
[1] 1835
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4039 alpha= 17.1161 beta= 18.3507
[1] 1836
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5985 alpha= 17.4013 beta= 18.3599
[1] 1837
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4088 alpha= 17.4814 beta= 18.371
[1] 1838
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.451 alpha= 17.226 beta= 18.3856
[1] 1839
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2222 alpha= 17.3638 beta= 18.3789
[1] 1840
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4017 alpha= 17.4576 beta= 18.3777
[1] 1841
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3975 alpha= 17.2287 beta= 18.3842
[1] 1842
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5083 alpha= 17.4957 beta= 18.3771
[1] 1843
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.5322 alpha= 17.0532 beta= 18.2949
[1] 1844
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4216 alpha= 17.0385 beta= 18.2613
[1] 1845
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.4468 alpha= 16.9953 beta= 18.2892
[1] 1846
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5183 alpha= 17.2761 beta= 18.2789
[1] 1847
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4424 alpha= 17.3389 beta= 18.2815
[1] 1848
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.498 alpha= 17.2942 beta= 18.2664
[1] 1849
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.526 alpha= 16.936 beta= 18.2934
[1] 1850
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7955 alpha= 17.3575 beta= 18.3005
[1] 1851
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0283 alpha= 17.3559 beta= 18.2538
[1] 1852
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3522 alpha= 17.5612 beta= 18.2807
[1] 1853
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1693 alpha= 17.3843 beta= 18.292
[1] 1854
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6534 alpha= 17.4953 beta= 18.2914
[1] 1855
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3602 alpha= 17.4817 beta= 18.2918
[1] 1856
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5256 alpha= 17.4593 beta= 18.2909
[1] 1857
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.42 alpha= 17.455 beta= 18.2913
[1] 1858
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3684 alpha= 17.4344 beta= 18.2773
[1] 1859
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3404 alpha= 17.4844 beta= 18.2203
[1] 1860
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.6892 alpha= 17.4635 beta= 18.2204
[1] 1861
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3571 alpha= 17.4567 beta= 18.2
[1] 1862
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.352 alpha= 17.4177 beta= 18.1823
[1] 1863
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2495 alpha= 17.6878 beta= 18.3006
[1] 1864
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.278 alpha= 17.6597 beta= 18.3076
[1] 1865
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3171 alpha= 17.5667 beta= 18.2089
[1] 1866
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3067 alpha= 17.5583 beta= 18.2219
[1] 1867
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2387 alpha= 17.7034 beta= 18.2231
[1] 1868
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2081 alpha= 17.7233 beta= 18.2125
[1] 1869
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2249 alpha= 17.7325 beta= 18.219
[1] 1870
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1712 alpha= 17.8176 beta= 18.242
[1] 1871
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1376 alpha= 17.8383 beta= 18.2603
[1] 1872
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1574 alpha= 17.835 beta= 18.2643
[1] 1873
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1307 alpha= 17.8198 beta= 18.2764
[1] 1874
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1145 alpha= 17.8371 beta= 18.2782
[1] 1875
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0396 alpha= 17.9705 beta= 18.2181
[1] 1876
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8615 alpha= 18.169 beta= 18.1377
[1] 1877
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9604 alpha= 18.0555 beta= 18.1655
[1] 1878
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9597 alpha= 18.0571 beta= 18.1783
[1] 1879
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9126 alpha= 18.0489 beta= 18.2515
[1] 1880
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9273 alpha= 18.0386 beta= 18.2557
[1] 1881
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9979 alpha= 18.0065 beta= 18.255
[1] 1882
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0079 alpha= 17.9874 beta= 18.2665
[1] 1883
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9216 alpha= 18.1476 beta= 18.2403
[1] 1884
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9225 alpha= 18.1113 beta= 18.2392
[1] 1885
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9355 alpha= 18.0853 beta= 18.221
[1] 1886
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8249 alpha= 18.3287 beta= 18.1593
[1] 1887
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8967 alpha= 18.1662 beta= 18.1817
[1] 1888
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9651 alpha= 18.0726 beta= 18.1691
[1] 1889
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8751 alpha= 18.2155 beta= 18.2107
[1] 1890
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0202 alpha= 17.8907 beta= 18.1512
[1] 1891
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0099 alpha= 17.9716 beta= 18.1247
[1] 1892
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9767 alpha= 18.002 beta= 18.1254
[1] 1893
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0413 alpha= 17.9182 beta= 18.1183
[1] 1894
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9909 alpha= 17.9665 beta= 18.0897
[1] 1895
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9961 alpha= 17.9305 beta= 18.0194
[1] 1896
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0036 alpha= 17.9881 beta= 17.9762
[1] 1897
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9953 alpha= 17.937 beta= 17.9509
[1] 1898
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1385 alpha= 17.929 beta= 17.9434
[1] 1899
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1038 alpha= 17.9086 beta= 17.9512
[1] 1900
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9693 alpha= 17.9742 beta= 17.9686
[1] 1901
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9071 alpha= 18.0777 beta= 17.9477
[1] 1902
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9026 alpha= 18.0993 beta= 17.9505
[1] 1903
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8862 alpha= 18.1143 beta= 17.9381
[1] 1904
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9121 alpha= 18 beta= 17.7916
[1] 1905
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9877 alpha= 17.9326 beta= 17.8002
[1] 1906
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8871 alpha= 18.0445 beta= 17.827
[1] 1907
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8634 alpha= 18.0555 beta= 17.8369
[1] 1908
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8375 alpha= 18.1488 beta= 17.8316
[1] 1909
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8986 alpha= 18.0101 beta= 17.8729
[1] 1910
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9226 alpha= 17.9747 beta= 17.874
[1] 1911
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8934 alpha= 18.0119 beta= 17.8808
[1] 1912
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8878 alpha= 18.0452 beta= 17.8879
[1] 1913
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.905 alpha= 18.0358 beta= 17.8887
[1] 1914
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9451 alpha= 17.9702 beta= 17.89
[1] 1915
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9327 alpha= 17.9472 beta= 17.8783
[1] 1916
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9674 alpha= 17.9557 beta= 17.911
[1] 1917
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9277 alpha= 17.9394 beta= 17.9027
[1] 1918
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9274 alpha= 17.9831 beta= 17.928
[1] 1919
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9682 alpha= 17.9109 beta= 17.9213
[1] 1920
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9961 alpha= 17.8146 beta= 17.9697
[1] 1921
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9996 alpha= 17.809 beta= 17.964
[1] 1922
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0091 alpha= 17.7878 beta= 17.9652
[1] 1923
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9898 alpha= 17.8182 beta= 17.9723
[1] 1924
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9911 alpha= 17.8133 beta= 17.9897
[1] 1925
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0263 alpha= 17.7407 beta= 17.9593
[1] 1926
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0716 alpha= 17.6909 beta= 17.9878
[1] 1927
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.07 alpha= 17.7117 beta= 17.9585
[1] 1928
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9815 alpha= 17.7521 beta= 17.8502
[1] 1929
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0084 alpha= 17.6961 beta= 17.8408
[1] 1930
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.99 alpha= 17.767 beta= 17.9148
[1] 1931
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9967 alpha= 17.7154 beta= 17.9006
[1] 1932
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.022 alpha= 17.7224 beta= 17.9022
[1] 1933
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0083 alpha= 17.701 beta= 17.8883
[1] 1934
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9854 alpha= 17.7328 beta= 17.9034
[1] 1935
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9922 alpha= 17.7018 beta= 17.9063
[1] 1936
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0007 alpha= 17.6581 beta= 17.8807
[1] 1937
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9784 alpha= 17.7112 beta= 17.868
[1] 1938
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9656 alpha= 17.7346 beta= 17.8856
[1] 1939
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9415 alpha= 17.7768 beta= 17.9031
[1] 1940
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9582 alpha= 17.7412 beta= 17.8977
[1] 1941
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0454 alpha= 17.5777 beta= 17.9102
[1] 1942
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9635 alpha= 17.6911 beta= 17.9211
[1] 1943
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9684 alpha= 17.6908 beta= 17.9209
[1] 1944
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9392 alpha= 17.7393 beta= 17.932
[1] 1945
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8108 alpha= 18.0052 beta= 17.9826
[1] 1946
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8335 alpha= 17.9379 beta= 17.993
[1] 1947
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.738 alpha= 18.0921 beta= 17.976
[1] 1948
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7534 alpha= 18.0825 beta= 17.9929
[1] 1949
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7823 alpha= 18.0816 beta= 18.0092
[1] 1950
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8194 alpha= 17.9694 beta= 17.9693
[1] 1951
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8933 alpha= 17.8474 beta= 17.979
[1] 1952
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8537 alpha= 17.9479 beta= 17.988
[1] 1953
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8104 alpha= 18.0226 beta= 17.9139
[1] 1954
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8639 alpha= 17.8919 beta= 17.8668
[1] 1955
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9155 alpha= 17.7738 beta= 17.8831
[1] 1956
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0289 alpha= 17.4793 beta= 17.7471
[1] 1957
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.079 alpha= 17.3913 beta= 17.7565
[1] 1958
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0771 alpha= 17.4078 beta= 17.7543
[1] 1959
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0546 alpha= 17.4383 beta= 17.7467
[1] 1960
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0283 alpha= 17.48 beta= 17.7361
[1] 1961
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0015 alpha= 17.5267 beta= 17.7325
[1] 1962
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0305 alpha= 17.4623 beta= 17.601
[1] 1963
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.045 alpha= 17.3837 beta= 17.634
[1] 1964
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0665 alpha= 17.348 beta= 17.6368
[1] 1965
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0343 alpha= 17.4163 beta= 17.6293
[1] 1966
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9847 alpha= 17.5585 beta= 17.5986
[1] 1967
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9691 alpha= 17.557 beta= 17.6017
[1] 1968
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9553 alpha= 17.576 beta= 17.6125
[1] 1969
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9675 alpha= 17.5845 beta= 17.64
[1] 1970
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9541 alpha= 17.5764 beta= 17.6
[1] 1971
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9506 alpha= 17.5899 beta= 17.5818
[1] 1972
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0275 alpha= 17.4592 beta= 17.6528
[1] 1973
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0423 alpha= 17.4427 beta= 17.6321
[1] 1974
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0088 alpha= 17.4828 beta= 17.6378
[1] 1975
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9935 alpha= 17.5227 beta= 17.6716
[1] 1976
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.949 alpha= 17.5589 beta= 17.5685
[1] 1977
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9893 alpha= 17.4254 beta= 17.458
[1] 1978
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9945 alpha= 17.4091 beta= 17.4601
[1] 1979
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0349 alpha= 17.3469 beta= 17.4607
[1] 1980
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0256 alpha= 17.3339 beta= 17.4062
[1] 1981
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0456 alpha= 17.3021 beta= 17.4164
[1] 1982
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0475 alpha= 17.3018 beta= 17.4106
[1] 1983
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.063 alpha= 17.2819 beta= 17.4048
[1] 1984
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0854 alpha= 17.3523 beta= 17.5594
[1] 1985
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2039 alpha= 17.2371 beta= 17.6023
[1] 1986
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1324 alpha= 17.3353 beta= 17.6059
[1] 1987
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1495 alpha= 17.31 beta= 17.6038
[1] 1988
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1421 alpha= 17.3026 beta= 17.5998
[1] 1989
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1665 alpha= 17.2571 beta= 17.6106
[1] 1990
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1843 alpha= 17.2108 beta= 17.561
[1] 1991
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1926 alpha= 17.1641 beta= 17.5453
[1] 1992
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9854 alpha= 17.5096 beta= 17.4436
[1] 1993
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8335 alpha= 17.7068 beta= 17.3588
[1] 1994
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7819 alpha= 17.7866 beta= 17.3254
[1] 1995
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7236 alpha= 17.8663 beta= 17.3343
[1] 1996
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7357 alpha= 17.8502 beta= 17.3306
[1] 1997
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7455 alpha= 17.7639 beta= 17.2997
[1] 1998
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6492 alpha= 17.8326 beta= 17.0714
[1] 1999
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6654 alpha= 17.7614 beta= 16.9797
[1] 2000
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6632 alpha= 17.7887 beta= 16.9797
[1] 2001
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6073 alpha= 17.8715 beta= 16.9519
[1] 2002
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5817 alpha= 17.9577 beta= 17.1232
[1] 2003
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6408 alpha= 17.8772 beta= 17.123
[1] 2004
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6399 alpha= 17.874 beta= 17.1416
[1] 2005
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.648 alpha= 17.8267 beta= 17.1406
[1] 2006
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7849 alpha= 17.6394 beta= 17.1696
[1] 2007
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8694 alpha= 17.4987 beta= 17.2194
[1] 2008
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8963 alpha= 17.466 beta= 17.1913
[1] 2009
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8904 alpha= 17.4381 beta= 17.1741
[1] 2010
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8391 alpha= 17.5316 beta= 17.1463
[1] 2011
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7763 alpha= 17.5755 beta= 17.1645
[1] 2012
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8391 alpha= 17.6423 beta= 17.173
[1] 2013
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7903 alpha= 17.7103 beta= 17.1713
[1] 2014
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.834 alpha= 17.7189 beta= 17.1718
[1] 2015
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7987 alpha= 17.7294 beta= 17.1853
[1] 2016
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8451 alpha= 17.8811 beta= 17.1528
[1] 2017
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6296 alpha= 17.8732 beta= 17.1554
[1] 2018
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6583 alpha= 17.8531 beta= 17.1465
[1] 2019
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7367 alpha= 17.8111 beta= 17.0989
[1] 2020
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7964 alpha= 17.6591 beta= 17.0851
[1] 2021
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8434 alpha= 17.7247 beta= 17.0842
[1] 2022
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7765 alpha= 17.7056 beta= 17.0743
[1] 2023
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9176 alpha= 17.7209 beta= 17.0637
[1] 2024
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0698 alpha= 17.7436 beta= 17.064
[1] 2025
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7401 alpha= 17.7848 beta= 17.0185
[1] 2026
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8678 alpha= 17.8552 beta= 17.019
[1] 2027
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7285 alpha= 17.7876 beta= 17.0183
[1] 2028
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7544 alpha= 17.7446 beta= 17.0121
[1] 2029
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7674 alpha= 17.817 beta= 17.0098
[1] 2030
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6355 alpha= 17.8224 beta= 16.9949
[1] 2031
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.688 alpha= 17.8286 beta= 17.0054
[1] 2032
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6926 alpha= 17.8117 beta= 17.0005
[1] 2033
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6127 alpha= 17.8839 beta= 16.9901
[1] 2034
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6558 alpha= 17.9034 beta= 16.9759
[1] 2035
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0359 alpha= 17.9272 beta= 16.9701
[1] 2036
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6691 alpha= 17.906 beta= 17.0361
[1] 2037
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9203 alpha= 17.9999 beta= 17.0551
[1] 2038
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6588 alpha= 17.9459 beta= 17.111
[1] 2039
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7456 alpha= 17.9534 beta= 17.1273
[1] 2040
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6693 alpha= 17.9601 beta= 17.1415
[1] 2041
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5848 alpha= 17.945 beta= 17.0852
[1] 2042
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4795 alpha= 18.0929 beta= 17.0252
[1] 2043
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5406 alpha= 18.0183 beta= 17.0283
[1] 2044
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.646 alpha= 17.9378 beta= 17.0373
[1] 2045
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6918 alpha= 17.9877 beta= 17.0113
[1] 2046
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5638 alpha= 17.9445 beta= 17.0059
[1] 2047
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1645 alpha= 17.8993 beta= 16.98
[1] 2048
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2444 alpha= 17.8691 beta= 16.9771
[1] 2049
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6992 alpha= 17.8664 beta= 16.951
[1] 2050
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6385 alpha= 17.8543 beta= 16.9477
[1] 2051
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6316 alpha= 17.939 beta= 16.9389
[1] 2052
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6067 alpha= 17.9004 beta= 16.9353
[1] 2053
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6503 alpha= 17.9603 beta= 16.8954
[1] 2054
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8285 alpha= 17.8898 beta= 16.8821
[1] 2055
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0112 alpha= 17.8812 beta= 16.8607
[1] 2056
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7398 alpha= 17.819 beta= 16.8361
[1] 2057
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6048 alpha= 17.8032 beta= 16.8403
[1] 2058
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7679 alpha= 17.8483 beta= 16.8242
[1] 2059
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8324 alpha= 17.8947 beta= 16.8425
[1] 2060
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5839 alpha= 17.8786 beta= 16.8338
[1] 2061
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5936 alpha= 17.8899 beta= 16.8312
[1] 2062
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5365 alpha= 17.8858 beta= 16.8001
[1] 2063
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5009 alpha= 17.9352 beta= 16.8319
[1] 2064
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4374 alpha= 18.0605 beta= 16.7379
[1] 2065
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.489 alpha= 18.036 beta= 16.7436
[1] 2066
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5137 alpha= 17.9823 beta= 16.7177
[1] 2067
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.444 alpha= 17.9871 beta= 16.676
[1] 2068
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.872 alpha= 18.0201 beta= 16.6773
[1] 2069
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5228 alpha= 18.0029 beta= 16.7125
[1] 2070
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4536 alpha= 18.0202 beta= 16.7222
[1] 2071
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4057 alpha= 17.9929 beta= 16.717
[1] 2072
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3974 alpha= 17.9914 beta= 16.7216
[1] 2073
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.292 alpha= 18.0592 beta= 16.7247
[1] 2074
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.287 alpha= 18.2012 beta= 16.6675
[1] 2075
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2732 alpha= 18.2242 beta= 16.6246
[1] 2076
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2991 alpha= 18.1743 beta= 16.5985
[1] 2077
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2878 alpha= 18.161 beta= 16.5647
[1] 2078
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3196 alpha= 18.1863 beta= 16.5699
[1] 2079
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2602 alpha= 18.2668 beta= 16.5556
[1] 2080
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2682 alpha= 18.2413 beta= 16.5656
[1] 2081
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2694 alpha= 18.2018 beta= 16.5678
[1] 2082
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3201 alpha= 18.2207 beta= 16.5787
[1] 2083
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2219 alpha= 18.27 beta= 16.5709
[1] 2084
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2721 alpha= 18.2083 beta= 16.5732
[1] 2085
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2458 alpha= 18.2539 beta= 16.5545
[1] 2086
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2587 alpha= 18.2495 beta= 16.5001
[1] 2087
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2462 alpha= 18.2335 beta= 16.5005
[1] 2088
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2492 alpha= 18.2518 beta= 16.499
[1] 2089
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2236 alpha= 18.3299 beta= 16.4892
[1] 2090
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2018 alpha= 18.3603 beta= 16.4783
[1] 2091
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2227 alpha= 18.3614 beta= 16.4797
[1] 2092
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.205 alpha= 18.3436 beta= 16.4845
[1] 2093
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2522 alpha= 18.3511 beta= 16.485
[1] 2094
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2051 alpha= 18.3822 beta= 16.4845
[1] 2095
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2142 alpha= 18.3639 beta= 16.4856
[1] 2096
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1678 alpha= 18.4279 beta= 16.4609
[1] 2097
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2081 alpha= 18.4096 beta= 16.4915
[1] 2098
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1409 alpha= 18.4066 beta= 16.4866
[1] 2099
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2315 alpha= 18.3419 beta= 16.4853
[1] 2100
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2137 alpha= 18.3685 beta= 16.4712
[1] 2101
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2103 alpha= 18.3716 beta= 16.471
[1] 2102
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.187 alpha= 18.284 beta= 16.401
[1] 2103
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2843 alpha= 18.2135 beta= 16.3872
[1] 2104
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2524 alpha= 18.2252 beta= 16.3892
[1] 2105
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2393 alpha= 18.2333 beta= 16.3914
[1] 2106
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2469 alpha= 18.2014 beta= 16.3787
[1] 2107
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.289 alpha= 18.1279 beta= 16.3571
[1] 2108
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2788 alpha= 18.1393 beta= 16.3436
[1] 2109
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3356 alpha= 18.1229 beta= 16.3435
[1] 2110
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2736 alpha= 18.1289 beta= 16.3458
[1] 2111
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2951 alpha= 18.135 beta= 16.3844
[1] 2112
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2485 alpha= 18.1191 beta= 16.3746
[1] 2113
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2365 alpha= 18.1427 beta= 16.3817
[1] 2114
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3215 alpha= 18.1075 beta= 16.4105
[1] 2115
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2499 alpha= 18.1728 beta= 16.4014
[1] 2116
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2879 alpha= 18.1648 beta= 16.4109
[1] 2117
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3096 alpha= 18.1898 beta= 16.4138
[1] 2118
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3234 alpha= 18.185 beta= 16.3833
[1] 2119
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2421 alpha= 18.2058 beta= 16.3696
[1] 2120
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2333 alpha= 18.2315 beta= 16.3732
[1] 2121
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.226 alpha= 18.2495 beta= 16.3917
[1] 2122
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0951 alpha= 18.4231 beta= 16.3041
[1] 2123
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1506 alpha= 18.3483 beta= 16.2587
[1] 2124
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0597 alpha= 18.4362 beta= 16.1318
[1] 2125
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0403 alpha= 18.4512 beta= 16.1309
[1] 2126
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9617 alpha= 18.5131 beta= 16.1307
[1] 2127
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.961 alpha= 18.4909 beta= 16.1214
[1] 2128
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0004 alpha= 18.4834 beta= 16.1185
[1] 2129
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0301 alpha= 18.429 beta= 16.1356
[1] 2130
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0368 alpha= 18.4095 beta= 16.1476
[1] 2131
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0245 alpha= 18.3775 beta= 16.1265
[1] 2132
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0199 alpha= 18.394 beta= 16.1301
[1] 2133
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9164 alpha= 18.4085 beta= 16.1288
[1] 2134
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0867 alpha= 18.2894 beta= 16.111
[1] 2135
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.125 alpha= 18.3169 beta= 16.1062
[1] 2136
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1281 alpha= 18.3765 beta= 16.1067
[1] 2137
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7594 alpha= 18.7186 beta= 16.0143
[1] 2138
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.768 alpha= 18.6887 beta= 15.9979
[1] 2139
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7711 alpha= 18.6889 beta= 16.0074
[1] 2140
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.821 alpha= 18.6069 beta= 15.9652
[1] 2141
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8158 alpha= 18.6408 beta= 15.9744
[1] 2142
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7891 alpha= 18.691 beta= 15.9627
[1] 2143
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.792 alpha= 18.6701 beta= 15.9599
[1] 2144
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8106 alpha= 18.669 beta= 15.9591
[1] 2145
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7695 alpha= 18.6695 beta= 15.9508
[1] 2146
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.6805 alpha= 18.7378 beta= 15.9251
[1] 2147
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1043 alpha= 18.45 beta= 15.8442
[1] 2148
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.801 alpha= 18.5777 beta= 15.8304
[1] 2149
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7409 alpha= 18.5746 beta= 15.8087
[1] 2150
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8423 alpha= 18.4691 beta= 15.7919
[1] 2151
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8294 alpha= 18.5239 beta= 15.788
[1] 2152
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8254 alpha= 18.511 beta= 15.7744
[1] 2153
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.916 alpha= 18.5692 beta= 15.7787
[1] 2154
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1314 alpha= 18.4706 beta= 15.7754
[1] 2155
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8738 alpha= 18.4646 beta= 15.76
[1] 2156
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9129 alpha= 18.4022 beta= 15.7063
[1] 2157
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9159 alpha= 18.3419 beta= 15.7149
[1] 2158
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9131 alpha= 18.3606 beta= 15.7178
[1] 2159
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8804 alpha= 18.3823 beta= 15.7212
[1] 2160
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8864 alpha= 18.3696 beta= 15.7263
[1] 2161
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9617 alpha= 18.3136 beta= 15.8675
[1] 2162
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.972 alpha= 18.2997 beta= 15.8783
[1] 2163
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9678 alpha= 18.3131 beta= 15.878
[1] 2164
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9773 alpha= 18.3059 beta= 15.8783
[1] 2165
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9354 alpha= 18.3121 beta= 15.8611
[1] 2166
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8749 alpha= 18.4098 beta= 15.9461
[1] 2167
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9572 alpha= 18.3449 beta= 15.9782
[1] 2168
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9531 alpha= 18.3783 beta= 15.9824
[1] 2169
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.93 alpha= 18.3966 beta= 15.9685
[1] 2170
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9946 alpha= 18.3266 beta= 16.0142
[1] 2171
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0468 alpha= 18.4376 beta= 16.1324
[1] 2172
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2433 alpha= 18.0834 beta= 16.1509
[1] 2173
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2649 alpha= 18.024 beta= 16.1648
[1] 2174
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1972 alpha= 18.0903 beta= 16.1238
[1] 2175
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1941 alpha= 18.086 beta= 16.1244
[1] 2176
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3453 alpha= 17.8985 beta= 16.2241
[1] 2177
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3418 alpha= 17.9216 beta= 16.2613
[1] 2178
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3682 alpha= 17.9023 beta= 16.2546
[1] 2179
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3625 alpha= 17.8982 beta= 16.2558
[1] 2180
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2956 alpha= 17.9809 beta= 16.2678
[1] 2181
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2634 alpha= 18.073 beta= 16.294
[1] 2182
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2612 alpha= 18.0731 beta= 16.2922
[1] 2183
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2143 alpha= 18.1781 beta= 16.3316
[1] 2184
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2282 alpha= 18.1754 beta= 16.3319
[1] 2185
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2764 alpha= 17.3331 beta= 15.0787
[1] 2186
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5055 alpha= 18.321 beta= 15.0786
[1] 2187
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.448 alpha= 18.4179 beta= 15.0778
[1] 2188
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4817 alpha= 18.4066 beta= 15.0814
[1] 2189
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4626 alpha= 18.4572 beta= 15.1028
[1] 2190
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3485 alpha= 18.7007 beta= 15.1058
[1] 2191
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3859 alpha= 18.6529 beta= 15.1149
[1] 2192
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3951 alpha= 18.6403 beta= 15.1176
[1] 2193
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3511 alpha= 18.7168 beta= 15.1219
[1] 2194
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3298 alpha= 18.7843 beta= 15.128
[1] 2195
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7917 alpha= 16.0619 beta= 12.0456
[1] 2196
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8586 alpha= 16.7681 beta= 12.0521
[1] 2197
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8935 alpha= 16.7829 beta= 12.0559
[1] 2198
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9563 alpha= 16.8037 beta= 12.0363
[1] 2199
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8358 alpha= 16.8923 beta= 12.0363
[1] 2200
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6959 alpha= 17.2185 beta= 12.0504
[1] 2201
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8302 alpha= 17.0858 beta= 12.1106
[1] 2202
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7918 alpha= 17.1048 beta= 12.0525
[1] 2203
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8076 alpha= 17.0954 beta= 12.0524
[1] 2204
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7719 alpha= 17.1424 beta= 12.039
[1] 2205
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7554 alpha= 17.1747 beta= 12.0389
[1] 2206
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7422 alpha= 17.2062 beta= 12.0388
[1] 2207
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5999 alpha= 17.4605 beta= 12.0214
[1] 2208
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5888 alpha= 17.489 beta= 12.0221
[1] 2209
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6027 alpha= 17.4687 beta= 12.0325
[1] 2210
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5791 alpha= 17.4833 beta= 12.0362
[1] 2211
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5201 alpha= 17.5453 beta= 11.9555
[1] 2212
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4983 alpha= 17.5645 beta= 11.955
[1] 2213
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5106 alpha= 17.5454 beta= 11.9496
[1] 2214
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4906 alpha= 17.5715 beta= 11.962
[1] 2215
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9943 alpha= 16.004 beta= 10.5949
[1] 2216
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9426 alpha= 16.0496 beta= 10.5202
[1] 2217
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0005 alpha= 16.1265 beta= 10.5204
[1] 2218
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9227 alpha= 16.2587 beta= 10.5194
[1] 2219
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6872 alpha= 16.6829 beta= 10.59
[1] 2220
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5598 alpha= 16.9065 beta= 10.5895
[1] 2221
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5606 alpha= 16.8737 beta= 10.5633
[1] 2222
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.554 alpha= 16.8995 beta= 10.5743
[1] 2223
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5556 alpha= 16.8947 beta= 10.5715
[1] 2224
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5454 alpha= 16.8922 beta= 10.5734
[1] 2225
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5011 alpha= 16.9942 beta= 10.5554
[1] 2226
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4206 alpha= 17.0786 beta= 10.5531
[1] 2227
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3922 alpha= 17.1326 beta= 10.5502
[1] 2228
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4278 alpha= 17.0996 beta= 10.5514
[1] 2229
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3671 alpha= 17.196 beta= 10.5794
[1] 2230
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3808 alpha= 17.2262 beta= 10.5903
[1] 2231
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3757 alpha= 17.2333 beta= 10.5869
[1] 2232
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3327 alpha= 17.3085 beta= 10.5841
[1] 2233
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3743 alpha= 17.2624 beta= 10.5812
[1] 2234
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3446 alpha= 17.2987 beta= 10.581
[1] 2235
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.352 alpha= 17.3068 beta= 10.5886
[1] 2236
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3052 alpha= 17.403 beta= 10.588
[1] 2237
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3564 alpha= 17.4436 beta= 10.7221
[1] 2238
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3917 alpha= 17.4368 beta= 10.7947
[1] 2239
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3566 alpha= 17.5006 beta= 10.7904
[1] 2240
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3216 alpha= 17.5509 beta= 10.7909
[1] 2241
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3218 alpha= 17.5504 beta= 10.7913
[1] 2242
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2825 alpha= 17.5401 beta= 10.6955
[1] 2243
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1284 alpha= 17.7209 beta= 10.6075
[1] 2244
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1243 alpha= 17.7059 beta= 10.6073
[1] 2245
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1274 alpha= 17.6644 beta= 10.601
[1] 2246
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.136 alpha= 17.6684 beta= 10.5959
[1] 2247
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1063 alpha= 17.7913 beta= 10.5771
[1] 2248
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0796 alpha= 17.7922 beta= 10.5117
[1] 2249
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0747 alpha= 17.7701 beta= 10.4776
[1] 2250
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0403 alpha= 17.8252 beta= 10.4716
[1] 2251
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0661 alpha= 17.8021 beta= 10.4744
[1] 2252
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0327 alpha= 17.8554 beta= 10.4639
[1] 2253
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0475 alpha= 17.8562 beta= 10.4609
[1] 2254
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9755 alpha= 17.9523 beta= 10.4593
[1] 2255
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0294 alpha= 17.8702 beta= 10.4504
[1] 2256
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.996 alpha= 17.9292 beta= 10.4557
[1] 2257
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0182 alpha= 17.9202 beta= 10.4574
[1] 2258
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1474 alpha= 17.7071 beta= 10.442
[1] 2259
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1521 alpha= 17.701 beta= 10.4503
[1] 2260
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2408 alpha= 17.5695 beta= 10.4413
[1] 2261
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3315 alpha= 17.4707 beta= 10.4268
[1] 2262
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3114 alpha= 17.4983 beta= 10.3793
[1] 2263
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3347 alpha= 17.4857 beta= 10.3795
[1] 2264
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3662 alpha= 17.445 beta= 10.3795
[1] 2265
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3487 alpha= 17.4671 beta= 10.3614
[1] 2266
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3388 alpha= 17.5004 beta= 10.3576
[1] 2267
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3494 alpha= 17.492 beta= 10.3714
[1] 2268
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3702 alpha= 17.4864 beta= 10.3967
[1] 2269
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3503 alpha= 17.5114 beta= 10.3907
[1] 2270
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2184 alpha= 17.8184 beta= 10.4015
[1] 2271
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2191 alpha= 17.8521 beta= 10.402
[1] 2272
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2839 alpha= 17.8156 beta= 10.4642
[1] 2273
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2885 alpha= 17.8145 beta= 10.4637
[1] 2274
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2643 alpha= 17.8459 beta= 10.4509
[1] 2275
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2289 alpha= 17.9204 beta= 10.4528
[1] 2276
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2116 alpha= 17.9679 beta= 10.4335
[1] 2277
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2632 alpha= 17.8942 beta= 10.4332
[1] 2278
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2269 alpha= 17.9467 beta= 10.4338
[1] 2279
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2353 alpha= 17.9452 beta= 10.4373
[1] 2280
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2987 alpha= 17.8695 beta= 10.4556
[1] 2281
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3124 alpha= 17.8534 beta= 10.4633
[1] 2282
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3012 alpha= 17.8574 beta= 10.4587
[1] 2283
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2945 alpha= 17.8688 beta= 10.4579
[1] 2284
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.248 alpha= 17.9515 beta= 10.4367
[1] 2285
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2247 alpha= 17.9666 beta= 10.4259
[1] 2286
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2604 alpha= 17.9102 beta= 10.4203
[1] 2287
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2329 alpha= 18.0684 beta= 10.4204
[1] 2288
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2157 alpha= 18.0829 beta= 10.4136
[1] 2289
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2417 alpha= 18.0698 beta= 10.4124
[1] 2290
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2079 alpha= 18.0902 beta= 10.4094
[1] 2291
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2063 alpha= 18.0894 beta= 10.4093
[1] 2292
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1915 alpha= 18.107 beta= 10.4042
[1] 2293
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2098 alpha= 18.0837 beta= 10.4145
[1] 2294
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.22 alpha= 18.0645 beta= 10.3804
[1] 2295
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2286 alpha= 18.0694 beta= 10.3818
[1] 2296
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1954 alpha= 18.1412 beta= 10.3792
[1] 2297
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1871 alpha= 18.1262 beta= 10.3768
[1] 2298
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.204 alpha= 18.1123 beta= 10.376
[1] 2299
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1123 alpha= 18.1712 beta= 10.3091
[1] 2300
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1267 alpha= 18.1789 beta= 10.3029
[1] 2301
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0811 alpha= 18.2331 beta= 10.3062
[1] 2302
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0419 alpha= 18.301 beta= 10.3069
[1] 2303
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 49.2931 alpha= 8.8806 beta= 10.7088
[1] 2304
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0655 alpha= 18.3264 beta= 10.3155
[1] 2305
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0087 alpha= 18.4098 beta= 10.3285
[1] 2306
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0173 alpha= 18.3968 beta= 10.3245
[1] 2307
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0735 alpha= 18.293 beta= 10.308
[1] 2308
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0578 alpha= 18.3203 beta= 10.3102
[1] 2309
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0719 alpha= 18.3376 beta= 10.3315
[1] 2310
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0704 alpha= 18.388 beta= 10.3318
[1] 2311
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0609 alpha= 18.3897 beta= 10.3322
[1] 2312
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0308 alpha= 18.365 beta= 10.2698
[1] 2313
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0744 alpha= 18.2601 beta= 10.2444
[1] 2314
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0623 alpha= 18.286 beta= 10.2449
[1] 2315
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0631 alpha= 18.2933 beta= 10.2537
[1] 2316
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9713 alpha= 18.4167 beta= 10.2357
[1] 2317
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9408 alpha= 18.4572 beta= 10.2322
[1] 2318
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8364 alpha= 18.5939 beta= 10.1933
[1] 2319
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7946 alpha= 18.6615 beta= 10.1827
[1] 2320
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8254 alpha= 18.7201 beta= 10.1638
[1] 2321
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8257 alpha= 18.7168 beta= 10.1638
[1] 2322
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8295 alpha= 18.7164 beta= 10.1571
[1] 2323
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8421 alpha= 18.7073 beta= 10.1563
[1] 2324
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9182 alpha= 18.5871 beta= 10.1557
[1] 2325
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9609 alpha= 18.4908 beta= 10.1286
[1] 2326
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9898 alpha= 18.4766 beta= 10.1257
[1] 2327
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.91 alpha= 18.6373 beta= 10.1206
[1] 2328
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8874 alpha= 18.6733 beta= 10.1043
[1] 2329
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.93 alpha= 18.615 beta= 10.1043
[1] 2330
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9421 alpha= 18.6139 beta= 10.1061
[1] 2331
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8514 alpha= 18.7491 beta= 10.088
[1] 2332
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.844 alpha= 18.759 beta= 10.0736
[1] 2333
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8583 alpha= 18.6388 beta= 9.995
[1] 2334
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8237 alpha= 18.6826 beta= 9.983
[1] 2335
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7961 alpha= 18.7038 beta= 9.9511
[1] 2336
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8098 alpha= 18.6688 beta= 9.9594
[1] 2337
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8134 alpha= 18.664 beta= 9.9612
[1] 2338
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8173 alpha= 18.6624 beta= 9.9623
[1] 2339
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7854 alpha= 18.7122 beta= 9.9599
[1] 2340
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7993 alpha= 18.7025 beta= 9.9602
[1] 2341
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7866 alpha= 18.7197 beta= 9.9578
[1] 2342
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8064 alpha= 18.7231 beta= 9.9633
[1] 2343
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8291 alpha= 18.689 beta= 9.961
[1] 2344
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8324 alpha= 18.6903 beta= 9.9609
[1] 2345
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.809 alpha= 18.6972 beta= 9.9374
[1] 2346
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8117 alpha= 18.6959 beta= 9.917
[1] 2347
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8152 alpha= 18.6939 beta= 9.9196
[1] 2348
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8406 alpha= 18.6738 beta= 9.9119
[1] 2349
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8455 alpha= 18.6696 beta= 9.9119
[1] 2350
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7991 alpha= 18.7188 beta= 9.8991
[1] 2351
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8206 alpha= 18.6934 beta= 9.8991
[1] 2352
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8044 alpha= 18.7154 beta= 9.8923
[1] 2353
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7995 alpha= 18.7337 beta= 9.8977
[1] 2354
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7595 alpha= 18.8116 beta= 9.8967
[1] 2355
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7604 alpha= 18.8151 beta= 9.8992
[1] 2356
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7435 alpha= 18.836 beta= 9.8992
[1] 2357
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7513 alpha= 18.8232 beta= 9.8981
[1] 2358
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7141 alpha= 18.8678 beta= 9.8655
[1] 2359
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7071 alpha= 18.877 beta= 9.8653
[1] 2360
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7152 alpha= 18.8545 beta= 9.8564
[1] 2361
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7358 alpha= 18.8277 beta= 9.8596
[1] 2362
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.766 alpha= 18.7877 beta= 9.8553
[1] 2363
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8041 alpha= 18.693 beta= 9.8307
[1] 2364
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7863 alpha= 18.7158 beta= 9.8236
[1] 2365
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7401 alpha= 18.7708 beta= 9.7992
[1] 2366
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.738 alpha= 18.7731 beta= 9.7957
[1] 2367
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7802 alpha= 18.7167 beta= 9.8058
[1] 2368
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7794 alpha= 18.7139 beta= 9.8063
[1] 2369
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7694 alpha= 18.7335 beta= 9.8093
[1] 2370
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7556 alpha= 18.758 beta= 9.8096
[1] 2371
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7333 alpha= 18.7965 beta= 9.8071
[1] 2372
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7455 alpha= 18.7868 beta= 9.8072
[1] 2373
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.759 alpha= 18.7547 beta= 9.8029
[1] 2374
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7369 alpha= 18.7831 beta= 9.8038
[1] 2375
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7205 alpha= 18.8099 beta= 9.806
[1] 2376
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7141 alpha= 18.8141 beta= 9.806
[1] 2377
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.6803 alpha= 18.8741 beta= 9.8094
[1] 2378
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.6977 alpha= 18.8223 beta= 9.8084
[1] 2379
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.6403 alpha= 18.8906 beta= 9.7789
[1] 2380
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.6291 alpha= 18.9032 beta= 9.7137
[1] 2381
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.6584 alpha= 18.8404 beta= 9.6817
[1] 2382
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.6507 alpha= 18.8378 beta= 9.6636
[1] 2383
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.6869 alpha= 18.7689 beta= 9.6681
[1] 2384
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.6853 alpha= 18.7711 beta= 9.6417
[1] 2385
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7343 alpha= 18.7227 beta= 9.6435
[1] 2386
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7579 alpha= 18.7145 beta= 9.6106
[1] 2387
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7745 alpha= 18.6842 beta= 9.5973
[1] 2388
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7376 alpha= 18.7743 beta= 9.5958
[1] 2389
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7599 alpha= 18.7474 beta= 9.6064
[1] 2390
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7589 alpha= 18.7651 beta= 9.6067
[1] 2391
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.783 alpha= 18.7157 beta= 9.6051
[1] 2392
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7952 alpha= 18.6961 beta= 9.6149
[1] 2393
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7865 alpha= 18.7193 beta= 9.6155
[1] 2394
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7798 alpha= 18.7222 beta= 9.6066
[1] 2395
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7843 alpha= 18.6864 beta= 9.5808
[1] 2396
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8097 alpha= 18.6571 beta= 9.5655
[1] 2397
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7877 alpha= 18.6849 beta= 9.5587
[1] 2398
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8215 alpha= 18.6858 beta= 9.6129
[1] 2399
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8186 alpha= 18.7249 beta= 9.6526
[1] 2400
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7864 alpha= 18.7719 beta= 9.655
[1] 2401
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8189 alpha= 18.7237 beta= 9.676
[1] 2402
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8012 alpha= 18.7536 beta= 9.6737
[1] 2403
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.812 alpha= 18.7307 beta= 9.6801
[1] 2404
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8357 alpha= 18.6544 beta= 9.6434
[1] 2405
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8486 alpha= 18.6334 beta= 9.6328
[1] 2406
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8531 alpha= 18.6247 beta= 9.6348
[1] 2407
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8989 alpha= 18.5805 beta= 9.6372
[1] 2408
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9611 alpha= 18.4996 beta= 9.6446
[1] 2409
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9826 alpha= 18.4638 beta= 9.6465
[1] 2410
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9755 alpha= 18.4787 beta= 9.6462
[1] 2411
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9577 alpha= 18.5327 beta= 9.6419
[1] 2412
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9438 alpha= 18.495 beta= 9.5918
[1] 2413
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9292 alpha= 18.5021 beta= 9.5809
[1] 2414
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8602 alpha= 18.5993 beta= 9.5733
[1] 2415
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8749 alpha= 18.5854 beta= 9.5713
[1] 2416
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8512 alpha= 18.5813 beta= 9.526
[1] 2417
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8954 alpha= 18.4929 beta= 9.5107
[1] 2418
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8882 alpha= 18.5042 beta= 9.5015
[1] 2419
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8854 alpha= 18.4893 beta= 9.485
[1] 2420
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8883 alpha= 18.4796 beta= 9.4824
[1] 2421
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8803 alpha= 18.4888 beta= 9.4858
[1] 2422
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8943 alpha= 18.4462 beta= 9.4706
[1] 2423
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8795 alpha= 18.4627 beta= 9.4599
[1] 2424
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9007 alpha= 18.4274 beta= 9.4471
[1] 2425
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8156 alpha= 18.4809 beta= 9.3775
[1] 2426
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9493 alpha= 18.1738 beta= 9.3179
[1] 2427
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8904 alpha= 18.2229 beta= 9.2644
[1] 2428
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9341 alpha= 18.1469 beta= 9.2385
[1] 2429
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9462 alpha= 18.1185 beta= 9.2427
[1] 2430
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0192 alpha= 18.065 beta= 9.3226
[1] 2431
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1473 alpha= 17.8473 beta= 9.3531
[1] 2432
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1426 alpha= 17.9186 beta= 9.3519
[1] 2433
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1114 alpha= 17.9049 beta= 9.3529
[1] 2434
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1051 alpha= 17.8943 beta= 9.3548
[1] 2435
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0021 alpha= 18.0737 beta= 9.3161
[1] 2436
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0352 alpha= 18.04 beta= 9.3472
[1] 2437
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0897 alpha= 18.0426 beta= 9.3475
[1] 2438
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0082 alpha= 18.0409 beta= 9.3432
[1] 2439
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9871 alpha= 18.0815 beta= 9.3391
[1] 2440
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0356 alpha= 18.0908 beta= 9.3232
[1] 2441
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0149 alpha= 18.0418 beta= 9.3277
[1] 2442
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9516 alpha= 18.1333 beta= 9.3298
[1] 2443
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8889 alpha= 18.1696 beta= 9.3009
[1] 2444
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9381 alpha= 18.0734 beta= 9.2921
[1] 2445
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9652 alpha= 18.0524 beta= 9.2866
[1] 2446
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9784 alpha= 18.0136 beta= 9.2864
[1] 2447
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9121 alpha= 18.0643 beta= 9.2894
[1] 2448
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9943 alpha= 17.9841 beta= 9.2866
[1] 2449
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9976 alpha= 17.9604 beta= 9.2868
[1] 2450
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9794 alpha= 17.9768 beta= 9.2613
[1] 2451
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0036 alpha= 17.9623 beta= 9.2741
[1] 2452
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9598 alpha= 17.9836 beta= 9.2773
[1] 2453
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0003 alpha= 17.9562 beta= 9.2681
[1] 2454
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9022 alpha= 18.1036 beta= 9.2602
[1] 2455
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9905 alpha= 18.0363 beta= 9.2416
[1] 2456
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9639 alpha= 18.0308 beta= 9.2395
[1] 2457
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9577 alpha= 18.0374 beta= 9.2383
[1] 2458
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9056 alpha= 18.0971 beta= 9.245
[1] 2459
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9115 alpha= 18.0885 beta= 9.2464
[1] 2460
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.949 alpha= 18.0712 beta= 9.2408
[1] 2461
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9698 alpha= 18.0425 beta= 9.2407
[1] 2462
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9451 alpha= 18.0105 beta= 9.2417
[1] 2463
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9529 alpha= 18.1055 beta= 9.2442
[1] 2464
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9611 alpha= 18.0938 beta= 9.2491
[1] 2465
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9472 alpha= 18.0381 beta= 9.2405
[1] 2466
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9235 alpha= 18.0632 beta= 9.2424
[1] 2467
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 67.6201 alpha= 6.0982 beta= 9.9253
[1] 2468
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9218 alpha= 18.1112 beta= 9.2545
[1] 2469
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9653 alpha= 18.0474 beta= 9.2602
[1] 2470
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9135 alpha= 18.2335 beta= 9.3918
[1] 2471
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0366 alpha= 18.3341 beta= 9.4073
[1] 2472
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6117 alpha= 18.2436 beta= 9.405
[1] 2473
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7309 alpha= 18.0924 beta= 9.4294
[1] 2474
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9432 alpha= 18.2601 beta= 9.4176
[1] 2475
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9094 alpha= 18.3406 beta= 9.4373
[1] 2476
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8631 alpha= 18.4536 beta= 9.4422
[1] 2477
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8792 alpha= 18.4776 beta= 9.4382
[1] 2478
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9379 alpha= 18.3569 beta= 9.4318
[1] 2479
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9564 alpha= 18.2672 beta= 9.4305
[1] 2480
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9221 alpha= 18.3206 beta= 9.4286
[1] 2481
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9257 alpha= 18.2967 beta= 9.4193
[1] 2482
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.928 alpha= 18.2689 beta= 9.427
[1] 2483
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9148 alpha= 18.3547 beta= 9.3866
[1] 2484
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0495 alpha= 18.195 beta= 9.3814
[1] 2485
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9535 alpha= 18.1773 beta= 9.3804
[1] 2486
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9769 alpha= 18.2221 beta= 9.3809
[1] 2487
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8982 alpha= 18.3086 beta= 9.3888
[1] 2488
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0569 alpha= 18.28 beta= 9.4055
[1] 2489
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8936 alpha= 18.3322 beta= 9.4415
[1] 2490
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9255 alpha= 18.405 beta= 9.4548
[1] 2491
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9507 alpha= 18.3419 beta= 9.4317
[1] 2492
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9923 alpha= 18.2998 beta= 9.4233
[1] 2493
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9335 alpha= 18.321 beta= 9.4124
[1] 2494
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0114 alpha= 18.28 beta= 9.4485
[1] 2495
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7075 alpha= 19.8688 beta= 12.3368
[1] 2496
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3522 alpha= 20.0451 beta= 12.3153
[1] 2497
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2945 alpha= 20.0912 beta= 12.3012
[1] 2498
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2492 alpha= 20.1626 beta= 12.2646
[1] 2499
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2647 alpha= 20.1256 beta= 12.2658
[1] 2500
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3209 alpha= 19.9515 beta= 12.2501
[1] 2501
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3106 alpha= 19.9547 beta= 12.243
[1] 2502
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2845 alpha= 19.9796 beta= 12.2323
[1] 2503
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2556 alpha= 20.0026 beta= 12.2324
[1] 2504
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.278 alpha= 20.0035 beta= 12.2403
[1] 2505
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2819 alpha= 20.0171 beta= 12.2634
[1] 2506
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2631 alpha= 20.0532 beta= 12.273
[1] 2507
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2907 alpha= 20.0094 beta= 12.2862
[1] 2508
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3027 alpha= 19.9977 beta= 12.2942
[1] 2509
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3109 alpha= 19.9934 beta= 12.2932
[1] 2510
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3102 alpha= 19.9912 beta= 12.3007
[1] 2511
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2922 alpha= 20.0186 beta= 12.2933
[1] 2512
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2632 alpha= 20.0867 beta= 12.2794
[1] 2513
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2546 alpha= 20.0734 beta= 12.2589
[1] 2514
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3072 alpha= 19.9846 beta= 12.2419
[1] 2515
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3035 alpha= 19.986 beta= 12.2172
[1] 2516
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2856 alpha= 20.034 beta= 12.2308
[1] 2517
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2658 alpha= 20.0976 beta= 12.2318
[1] 2518
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3433 alpha= 19.9383 beta= 12.1851
[1] 2519
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3098 alpha= 20.0307 beta= 12.2109
[1] 2520
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3958 alpha= 19.8518 beta= 12.1825
[1] 2521
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3701 alpha= 19.8885 beta= 12.1846
[1] 2522
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3505 alpha= 19.9546 beta= 12.201
[1] 2523
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.405 alpha= 19.899 beta= 12.2129
[1] 2524
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3361 alpha= 19.9948 beta= 12.201
[1] 2525
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4054 alpha= 19.9293 beta= 12.2254
[1] 2526
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4284 alpha= 19.8743 beta= 12.2133
[1] 2527
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4065 alpha= 19.9032 beta= 12.2109
[1] 2528
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3999 alpha= 19.9241 beta= 12.2061
[1] 2529
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3873 alpha= 19.9295 beta= 12.1906
[1] 2530
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4174 alpha= 19.9118 beta= 12.2312
[1] 2531
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3532 alpha= 19.9997 beta= 12.2327
[1] 2532
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3757 alpha= 19.9926 beta= 12.231
[1] 2533
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3637 alpha= 19.9992 beta= 12.2382
[1] 2534
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3954 alpha= 19.9679 beta= 12.2434
[1] 2535
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4233 alpha= 19.9098 beta= 12.2642
[1] 2536
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4491 alpha= 19.8782 beta= 12.264
[1] 2537
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.432 alpha= 19.9362 beta= 12.2939
[1] 2538
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.432 alpha= 19.9353 beta= 12.2929
[1] 2539
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4592 alpha= 19.953 beta= 12.2913
[1] 2540
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3901 alpha= 19.9705 beta= 12.2331
[1] 2541
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.398 alpha= 19.956 beta= 12.2232
[1] 2542
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3842 alpha= 19.9567 beta= 12.1862
[1] 2543
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3103 alpha= 20.1005 beta= 12.1627
[1] 2544
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3225 alpha= 20.0647 beta= 12.1646
[1] 2545
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3266 alpha= 20.0698 beta= 12.1682
[1] 2546
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3112 alpha= 20.0679 beta= 12.1685
[1] 2547
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2705 alpha= 20.1174 beta= 12.1613
[1] 2548
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2797 alpha= 20.1163 beta= 12.161
[1] 2549
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2925 alpha= 20.091 beta= 12.1602
[1] 2550
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2964 alpha= 20.0929 beta= 12.1725
[1] 2551
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2813 alpha= 20.1081 beta= 12.1629
[1] 2552
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2754 alpha= 20.1251 beta= 12.1572
[1] 2553
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2824 alpha= 20.1132 beta= 12.1587
[1] 2554
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2426 alpha= 20.1556 beta= 12.1515
[1] 2555
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3001 alpha= 20.122 beta= 12.1609
[1] 2556
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2833 alpha= 20.1264 beta= 12.1544
[1] 2557
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2869 alpha= 20.1252 beta= 12.155
[1] 2558
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2868 alpha= 20.1228 beta= 12.1565
[1] 2559
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3041 alpha= 20.0974 beta= 12.157
[1] 2560
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3287 alpha= 20.0598 beta= 12.1582
[1] 2561
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3024 alpha= 20.0884 beta= 12.1509
[1] 2562
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2875 alpha= 20.1181 beta= 12.1479
[1] 2563
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.33 alpha= 20.0603 beta= 12.1471
[1] 2564
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2957 alpha= 20.0836 beta= 12.1092
[1] 2565
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3488 alpha= 20.0236 beta= 12.1667
[1] 2566
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3163 alpha= 20.1406 beta= 12.1679
[1] 2567
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3226 alpha= 20.1245 beta= 12.1674
[1] 2568
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.324 alpha= 20.1104 beta= 12.1696
[1] 2569
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3608 alpha= 20.0591 beta= 12.1847
[1] 2570
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.353 alpha= 20.0934 beta= 12.1743
[1] 2571
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3838 alpha= 20.0235 beta= 12.1826
[1] 2572
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3439 alpha= 20.0961 beta= 12.2014
[1] 2573
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2811 alpha= 20.1907 beta= 12.1762
[1] 2574
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1628 alpha= 20.3931 beta= 12.1354
[1] 2575
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1227 alpha= 20.447 beta= 12.0862
[1] 2576
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1347 alpha= 20.3962 beta= 12.074
[1] 2577
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1489 alpha= 20.482 beta= 12.1088
[1] 2578
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1249 alpha= 20.4836 beta= 12.1131
[1] 2579
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5503 alpha= 19.2104 beta= 11.4654
[1] 2580
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.465 alpha= 20.1827 beta= 11.4633
[1] 2581
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5578 alpha= 19.7332 beta= 11.1688
[1] 2582
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5615 alpha= 19.8085 beta= 11.1752
[1] 2583
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6417 alpha= 19.6753 beta= 11.1993
[1] 2584
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7169 alpha= 19.53 beta= 11.2177
[1] 2585
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6914 alpha= 19.5946 beta= 11.2202
[1] 2586
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6917 alpha= 19.5865 beta= 11.2178
[1] 2587
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7105 alpha= 19.567 beta= 11.2204
[1] 2588
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7344 alpha= 19.6168 beta= 11.2226
[1] 2589
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7026 alpha= 19.6355 beta= 11.2725
[1] 2590
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6774 alpha= 19.6435 beta= 11.2717
[1] 2591
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.706 alpha= 19.6238 beta= 11.2751
[1] 2592
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.674 alpha= 19.7201 beta= 11.3126
[1] 2593
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6532 alpha= 19.7669 beta= 11.3157
[1] 2594
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6621 alpha= 19.7819 beta= 11.3227
[1] 2595
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6882 alpha= 19.7526 beta= 11.3266
[1] 2596
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6733 alpha= 19.7793 beta= 11.3277
[1] 2597
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.694 alpha= 19.7482 beta= 11.3229
[1] 2598
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6742 alpha= 19.7487 beta= 11.2835
[1] 2599
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.613 alpha= 19.8376 beta= 11.3111
[1] 2600
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.657 alpha= 19.7733 beta= 11.3231
[1] 2601
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6624 alpha= 19.7738 beta= 11.3219
[1] 2602
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6697 alpha= 19.7554 beta= 11.3131
[1] 2603
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6427 alpha= 19.788 beta= 11.3326
[1] 2604
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6551 alpha= 19.7678 beta= 11.3369
[1] 2605
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6701 alpha= 19.7476 beta= 11.3337
[1] 2606
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6691 alpha= 19.7393 beta= 11.3401
[1] 2607
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7019 alpha= 19.6815 beta= 11.3403
[1] 2608
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7125 alpha= 19.6539 beta= 11.3376
[1] 2609
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7676 alpha= 19.5522 beta= 11.3652
[1] 2610
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7492 alpha= 19.5796 beta= 11.3775
[1] 2611
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7348 alpha= 19.5692 beta= 11.3791
[1] 2612
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7358 alpha= 19.5659 beta= 11.3812
[1] 2613
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7448 alpha= 19.5664 beta= 11.3811
[1] 2614
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7516 alpha= 19.5541 beta= 11.3814
[1] 2615
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7745 alpha= 19.5046 beta= 11.3873
[1] 2616
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7957 alpha= 19.5055 beta= 11.423
[1] 2617
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8209 alpha= 19.4603 beta= 11.4247
[1] 2618
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8122 alpha= 19.4754 beta= 11.4231
[1] 2619
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8103 alpha= 19.4675 beta= 11.4192
[1] 2620
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7927 alpha= 19.5218 beta= 11.4377
[1] 2621
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8081 alpha= 19.4964 beta= 11.4486
[1] 2622
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7984 alpha= 19.5084 beta= 11.4489
[1] 2623
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.849 alpha= 19.448 beta= 11.4641
[1] 2624
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.855 alpha= 19.4387 beta= 11.4646
[1] 2625
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8479 alpha= 19.4315 beta= 11.439
[1] 2626
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8539 alpha= 19.433 beta= 11.4412
[1] 2627
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8672 alpha= 19.413 beta= 11.4375
[1] 2628
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8577 alpha= 19.385 beta= 11.4396
[1] 2629
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8431 alpha= 19.397 beta= 11.4402
[1] 2630
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6888 alpha= 19.5933 beta= 11.3439
[1] 2631
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.719 alpha= 19.5085 beta= 11.3092
[1] 2632
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7172 alpha= 19.5288 beta= 11.3159
[1] 2633
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7242 alpha= 19.5234 beta= 11.3157
[1] 2634
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7341 alpha= 19.5189 beta= 11.3273
[1] 2635
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7036 alpha= 19.5882 beta= 11.3133
[1] 2636
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.723 alpha= 19.5569 beta= 11.3155
[1] 2637
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7273 alpha= 19.5685 beta= 11.3289
[1] 2638
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7311 alpha= 19.5918 beta= 11.3367
[1] 2639
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7624 alpha= 19.5419 beta= 11.3497
[1] 2640
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7807 alpha= 19.5152 beta= 11.367
[1] 2641
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7505 alpha= 19.5479 beta= 11.3678
[1] 2642
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7825 alpha= 19.5086 beta= 11.3704
[1] 2643
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.728 alpha= 19.6067 beta= 11.3783
[1] 2644
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7916 alpha= 19.531 beta= 11.3831
[1] 2645
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7123 alpha= 19.6541 beta= 11.3675
[1] 2646
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7547 alpha= 19.6377 beta= 11.3948
[1] 2647
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7513 alpha= 19.6411 beta= 11.404
[1] 2648
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7677 alpha= 19.5989 beta= 11.3814
[1] 2649
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7454 alpha= 19.6301 beta= 11.382
[1] 2650
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7755 alpha= 19.5755 beta= 11.3774
[1] 2651
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8068 alpha= 19.5033 beta= 11.3912
[1] 2652
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7884 alpha= 19.5539 beta= 11.3905
[1] 2653
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.752 alpha= 19.6011 beta= 11.3898
[1] 2654
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7755 alpha= 19.5812 beta= 11.3894
[1] 2655
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7421 alpha= 19.6435 beta= 11.3846
[1] 2656
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7464 alpha= 19.5768 beta= 11.3541
[1] 2657
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7154 alpha= 19.6051 beta= 11.3544
[1] 2658
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7114 alpha= 19.6236 beta= 11.3359
[1] 2659
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7179 alpha= 19.5585 beta= 11.3278
[1] 2660
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6455 alpha= 19.6724 beta= 11.2879
[1] 2661
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.64 alpha= 19.6853 beta= 11.3046
[1] 2662
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.674 alpha= 19.6517 beta= 11.3475
[1] 2663
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6693 alpha= 19.656 beta= 11.3269
[1] 2664
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6548 alpha= 19.6653 beta= 11.3143
[1] 2665
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6597 alpha= 19.627 beta= 11.3192
[1] 2666
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6428 alpha= 19.6825 beta= 11.3263
[1] 2667
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6162 alpha= 19.7431 beta= 11.3442
[1] 2668
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6061 alpha= 19.7834 beta= 11.3536
[1] 2669
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6156 alpha= 19.779 beta= 11.3572
[1] 2670
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6001 alpha= 19.8003 beta= 11.3579
[1] 2671
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6087 alpha= 19.7874 beta= 11.3557
[1] 2672
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6111 alpha= 19.7858 beta= 11.3549
[1] 2673
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6083 alpha= 19.7956 beta= 11.3554
[1] 2674
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6094 alpha= 19.7865 beta= 11.3573
[1] 2675
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5689 alpha= 19.8474 beta= 11.3476
[1] 2676
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6343 alpha= 19.7622 beta= 11.3786
[1] 2677
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6517 alpha= 19.7404 beta= 11.3894
[1] 2678
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6259 alpha= 19.7882 beta= 11.3914
[1] 2679
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6139 alpha= 19.8356 beta= 11.3906
[1] 2680
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.604 alpha= 19.8402 beta= 11.3851
[1] 2681
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5986 alpha= 19.8672 beta= 11.4089
[1] 2682
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.643 alpha= 19.8008 beta= 11.4127
[1] 2683
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6272 alpha= 19.8194 beta= 11.411
[1] 2684
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6408 alpha= 19.7988 beta= 11.4002
[1] 2685
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.602 alpha= 19.855 beta= 11.4136
[1] 2686
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.647 alpha= 19.7588 beta= 11.3749
[1] 2687
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6817 alpha= 19.7057 beta= 11.3802
[1] 2688
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7071 alpha= 19.6765 beta= 11.3902
[1] 2689
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7174 alpha= 19.6682 beta= 11.3924
[1] 2690
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.722 alpha= 19.6497 beta= 11.3918
[1] 2691
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7223 alpha= 19.6518 beta= 11.3907
[1] 2692
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7423 alpha= 19.6209 beta= 11.4065
[1] 2693
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7355 alpha= 19.638 beta= 11.4133
[1] 2694
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.759 alpha= 19.6257 beta= 11.4835
[1] 2695
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8231 alpha= 19.5125 beta= 11.4908
[1] 2696
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8259 alpha= 19.4988 beta= 11.493
[1] 2697
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.836 alpha= 19.4927 beta= 11.5077
[1] 2698
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8591 alpha= 19.3882 beta= 11.4707
[1] 2699
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8638 alpha= 19.3181 beta= 11.4473
[1] 2700
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8759 alpha= 19.3014 beta= 11.4559
[1] 2701
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8179 alpha= 19.3887 beta= 11.438
[1] 2702
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8152 alpha= 19.3855 beta= 11.4519
[1] 2703
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7952 alpha= 19.3944 beta= 11.4421
[1] 2704
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7877 alpha= 19.3905 beta= 11.4331
[1] 2705
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7561 alpha= 19.4602 beta= 11.4142
[1] 2706
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7489 alpha= 19.503 beta= 11.4177
[1] 2707
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6886 alpha= 19.6341 beta= 11.4161
[1] 2708
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6999 alpha= 19.604 beta= 11.4203
[1] 2709
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6888 alpha= 19.6249 beta= 11.4136
[1] 2710
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7176 alpha= 19.5663 beta= 11.3982
[1] 2711
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7449 alpha= 19.4897 beta= 11.3822
[1] 2712
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8497 alpha= 19.3388 beta= 11.4108
[1] 2713
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8421 alpha= 19.3529 beta= 11.4126
[1] 2714
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7978 alpha= 19.4261 beta= 11.388
[1] 2715
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7231 alpha= 19.5371 beta= 11.3745
[1] 2716
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7195 alpha= 19.5417 beta= 11.3367
[1] 2717
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6766 alpha= 19.603 beta= 11.3231
[1] 2718
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.71 alpha= 19.5815 beta= 11.3225
[1] 2719
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6825 alpha= 19.6193 beta= 11.3518
[1] 2720
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7221 alpha= 19.5737 beta= 11.3353
[1] 2721
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7428 alpha= 19.5639 beta= 11.3393
[1] 2722
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7549 alpha= 19.5176 beta= 11.319
[1] 2723
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7318 alpha= 19.5677 beta= 11.348
[1] 2724
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7407 alpha= 19.5951 beta= 11.3696
[1] 2725
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7195 alpha= 19.6309 beta= 11.3567
[1] 2726
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.741 alpha= 19.5076 beta= 11.3083
[1] 2727
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8085 alpha= 19.423 beta= 11.3169
[1] 2728
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7727 alpha= 19.5029 beta= 11.3019
[1] 2729
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7306 alpha= 19.5329 beta= 11.29
[1] 2730
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.713 alpha= 19.5995 beta= 11.2811
[1] 2731
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7447 alpha= 19.5457 beta= 11.2931
[1] 2732
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.788 alpha= 19.4417 beta= 11.2752
[1] 2733
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7935 alpha= 19.4594 beta= 11.2751
[1] 2734
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7929 alpha= 19.4317 beta= 11.2608
[1] 2735
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8278 alpha= 19.4195 beta= 11.2607
[1] 2736
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6972 alpha= 19.6208 beta= 11.2163
[1] 2737
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.698 alpha= 19.6436 beta= 11.2162
[1] 2738
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6817 alpha= 19.6572 beta= 11.2197
[1] 2739
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7343 alpha= 19.5849 beta= 11.2444
[1] 2740
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7368 alpha= 19.5503 beta= 11.2637
[1] 2741
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.734 alpha= 19.5234 beta= 11.2523
[1] 2742
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7788 alpha= 19.5386 beta= 11.2503
[1] 2743
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7851 alpha= 19.4621 beta= 11.275
[1] 2744
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6864 alpha= 19.658 beta= 11.232
[1] 2745
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5107 alpha= 19.9108 beta= 11.1875
[1] 2746
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5031 alpha= 19.9738 beta= 11.2064
[1] 2747
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3519 alpha= 20.1674 beta= 11.1206
[1] 2748
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1871 alpha= 20.3968 beta= 11.0287
[1] 2749
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1823 alpha= 20.387 beta= 11.002
[1] 2750
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1941 alpha= 20.3802 beta= 11.0061
[1] 2751
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1727 alpha= 20.4163 beta= 11.0026
[1] 2752
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1483 alpha= 20.4356 beta= 10.9869
[1] 2753
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1215 alpha= 20.456 beta= 10.9825
[1] 2754
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1634 alpha= 20.4165 beta= 10.986
[1] 2755
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1535 alpha= 20.3966 beta= 10.9759
[1] 2756
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1718 alpha= 20.3981 beta= 10.9837
[1] 2757
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1574 alpha= 20.4214 beta= 10.9818
[1] 2758
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1391 alpha= 20.4167 beta= 10.9833
[1] 2759
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1699 alpha= 20.3636 beta= 10.9719
[1] 2760
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1396 alpha= 20.3574 beta= 10.9497
[1] 2761
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1808 alpha= 20.2911 beta= 10.9626
[1] 2762
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1684 alpha= 20.3008 beta= 10.9632
[1] 2763
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1394 alpha= 20.3401 beta= 10.9664
[1] 2764
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1608 alpha= 20.2924 beta= 10.9886
[1] 2765
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.183 alpha= 20.2628 beta= 10.9861
[1] 2766
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1692 alpha= 20.2591 beta= 10.9777
[1] 2767
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1682 alpha= 20.2627 beta= 10.976
[1] 2768
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2282 alpha= 20.1327 beta= 10.9208
[1] 2769
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2607 alpha= 20.0919 beta= 10.9235
[1] 2770
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2575 alpha= 20.0936 beta= 10.9281
[1] 2771
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.271 alpha= 20.0885 beta= 10.93
[1] 2772
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2669 alpha= 20.0812 beta= 10.9301
[1] 2773
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3544 alpha= 19.9171 beta= 10.9507
[1] 2774
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3948 alpha= 19.8679 beta= 10.951
[1] 2775
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3813 alpha= 19.8791 beta= 10.9718
[1] 2776
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3565 alpha= 19.894 beta= 10.9714
[1] 2777
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2973 alpha= 19.8563 beta= 10.9679
[1] 2778
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3694 alpha= 19.9045 beta= 10.9697
[1] 2779
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4089 alpha= 19.8673 beta= 10.9806
[1] 2780
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5371 alpha= 19.6979 beta= 11.0901
[1] 2781
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.622 alpha= 19.5104 beta= 11.081
[1] 2782
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6241 alpha= 19.4756 beta= 11.0777
[1] 2783
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6447 alpha= 19.4699 beta= 11.0826
[1] 2784
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6438 alpha= 19.4602 beta= 11.0803
[1] 2785
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6243 alpha= 19.5116 beta= 11.0839
[1] 2786
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6614 alpha= 19.4504 beta= 11.0582
[1] 2787
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6523 alpha= 19.4568 beta= 11.0658
[1] 2788
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6624 alpha= 19.4188 beta= 11.0434
[1] 2789
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7053 alpha= 19.3718 beta= 11.0448
[1] 2790
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6934 alpha= 19.3791 beta= 11.0434
[1] 2791
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6866 alpha= 19.3483 beta= 11.0322
[1] 2792
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6457 alpha= 19.455 beta= 11.0748
[1] 2793
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6912 alpha= 19.4098 beta= 11.0866
[1] 2794
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7301 alpha= 19.3763 beta= 11.0799
[1] 2795
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7126 alpha= 19.4573 beta= 11.1782
[1] 2796
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7177 alpha= 19.4385 beta= 11.1713
[1] 2797
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7401 alpha= 19.366 beta= 11.1407
[1] 2798
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.714 alpha= 19.4135 beta= 11.1318
[1] 2799
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7258 alpha= 19.3576 beta= 11.1341
[1] 2800
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8164 alpha= 19.2301 beta= 11.1818
[1] 2801
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8162 alpha= 19.2216 beta= 11.1837
[1] 2802
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8344 alpha= 19.2088 beta= 11.1832
[1] 2803
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8544 alpha= 19.1591 beta= 11.1823
[1] 2804
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8878 alpha= 19.1007 beta= 11.1845
[1] 2805
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8633 alpha= 19.1446 beta= 11.1628
[1] 2806
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8285 alpha= 19.1864 beta= 11.1247
[1] 2807
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8002 alpha= 19.2202 beta= 11.1466
[1] 2808
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8442 alpha= 19.1611 beta= 11.1491
[1] 2809
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8532 alpha= 19.1529 beta= 11.1373
[1] 2810
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8209 alpha= 19.1617 beta= 11.1356
[1] 2811
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8981 alpha= 19.125 beta= 11.1312
[1] 2812
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8605 alpha= 19.1406 beta= 11.1327
[1] 2813
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.814 alpha= 19.144 beta= 11.1334
[1] 2814
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8605 alpha= 19.1292 beta= 11.1236
[1] 2815
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8197 alpha= 19.1635 beta= 11.1293
[1] 2816
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8486 alpha= 19.1378 beta= 11.1097
[1] 2817
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8503 alpha= 19.1483 beta= 11.1053
[1] 2818
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8001 alpha= 19.1898 beta= 11.1178
[1] 2819
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7873 alpha= 19.2504 beta= 11.1417
[1] 2820
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7788 alpha= 19.3371 beta= 11.1741
[1] 2821
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.783 alpha= 19.3506 beta= 11.2031
[1] 2822
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7446 alpha= 19.3855 beta= 11.2228
[1] 2823
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7194 alpha= 19.4925 beta= 11.2496
[1] 2824
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.684 alpha= 19.5009 beta= 11.225
[1] 2825
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6792 alpha= 19.4774 beta= 11.2284
[1] 2826
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7045 alpha= 19.4698 beta= 11.2531
[1] 2827
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6999 alpha= 19.5453 beta= 11.2719
[1] 2828
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6619 alpha= 19.536 beta= 11.2762
[1] 2829
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6629 alpha= 19.5514 beta= 11.2626
[1] 2830
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6707 alpha= 19.5465 beta= 11.2652
[1] 2831
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7219 alpha= 19.5078 beta= 11.2782
[1] 2832
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7954 alpha= 19.4173 beta= 11.3029
[1] 2833
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7551 alpha= 19.4533 beta= 11.3155
[1] 2834
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7905 alpha= 19.4173 beta= 11.3247
[1] 2835
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7413 alpha= 19.5085 beta= 11.3023
[1] 2836
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7247 alpha= 19.4911 beta= 11.2994
[1] 2837
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7423 alpha= 19.4715 beta= 11.2894
[1] 2838
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7271 alpha= 19.4926 beta= 11.2897
[1] 2839
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7438 alpha= 19.4271 beta= 11.2706
[1] 2840
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6891 alpha= 19.51 beta= 11.2604
[1] 2841
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7096 alpha= 19.4912 beta= 11.2354
[1] 2842
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.643 alpha= 19.5601 beta= 11.2359
[1] 2843
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6611 alpha= 19.5968 beta= 11.2929
[1] 2844
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7073 alpha= 19.6297 beta= 11.2935
[1] 2845
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6739 alpha= 19.6062 beta= 11.2699
[1] 2846
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6597 alpha= 19.61 beta= 11.2697
[1] 2847
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6833 alpha= 19.5747 beta= 11.2837
[1] 2848
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6825 alpha= 19.6113 beta= 11.2751
[1] 2849
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6783 alpha= 19.6107 beta= 11.275
[1] 2850
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6506 alpha= 19.6149 beta= 11.2653
[1] 2851
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6292 alpha= 19.6497 beta= 11.292
[1] 2852
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6871 alpha= 19.6039 beta= 11.2996
[1] 2853
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.696 alpha= 19.572 beta= 11.2957
[1] 2854
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6478 alpha= 19.6064 beta= 11.2915
[1] 2855
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6772 alpha= 19.5664 beta= 11.302
[1] 2856
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7117 alpha= 19.563 beta= 11.3072
[1] 2857
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7256 alpha= 19.5299 beta= 11.2929
[1] 2858
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.659 alpha= 19.6049 beta= 11.3014
[1] 2859
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6845 alpha= 19.6301 beta= 11.3217
[1] 2860
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6362 alpha= 19.6631 beta= 11.3223
[1] 2861
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6497 alpha= 19.6474 beta= 11.3263
[1] 2862
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6833 alpha= 19.5857 beta= 11.3387
[1] 2863
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7127 alpha= 19.5351 beta= 11.3346
[1] 2864
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8042 alpha= 19.4479 beta= 11.2866
[1] 2865
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7585 alpha= 19.5624 beta= 11.3186
[1] 2866
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6579 alpha= 19.6351 beta= 11.3216
[1] 2867
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8016 alpha= 19.537 beta= 11.3339
[1] 2868
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6643 alpha= 19.6204 beta= 11.3198
[1] 2869
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6633 alpha= 19.5936 beta= 11.3005
[1] 2870
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6854 alpha= 19.6211 beta= 11.2851
[1] 2871
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6412 alpha= 19.6337 beta= 11.2888
[1] 2872
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7439 alpha= 19.6076 beta= 11.2892
[1] 2873
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6397 alpha= 19.6414 beta= 11.291
[1] 2874
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8233 alpha= 19.4668 beta= 11.2685
[1] 2875
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7265 alpha= 19.4772 beta= 11.2788
[1] 2876
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7305 alpha= 19.4798 beta= 11.2933
[1] 2877
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.84 alpha= 19.3875 beta= 11.2854
[1] 2878
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8279 alpha= 19.3885 beta= 11.276
[1] 2879
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7702 alpha= 19.4004 beta= 11.2761
[1] 2880
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7987 alpha= 19.3051 beta= 11.2564
[1] 2881
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8188 alpha= 19.2456 beta= 11.2416
[1] 2882
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8327 alpha= 19.2191 beta= 11.232
[1] 2883
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8259 alpha= 19.219 beta= 11.2397
[1] 2884
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7682 alpha= 19.26 beta= 11.1573
[1] 2885
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7705 alpha= 19.31 beta= 11.1551
[1] 2886
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7213 alpha= 19.3555 beta= 11.1722
[1] 2887
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6541 alpha= 19.4253 beta= 11.1058
[1] 2888
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7566 alpha= 19.4234 beta= 11.0909
[1] 2889
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7149 alpha= 19.3941 beta= 11.0865
[1] 2890
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7323 alpha= 19.3536 beta= 11.147
[1] 2891
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7443 alpha= 19.3618 beta= 11.1581
[1] 2892
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7608 alpha= 19.3471 beta= 11.1579
[1] 2893
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.723 alpha= 19.4255 beta= 11.1443
[1] 2894
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7951 alpha= 19.4964 beta= 11.1922
[1] 2895
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7897 alpha= 19.5529 beta= 11.2319
[1] 2896
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.779 alpha= 19.5342 beta= 11.2769
[1] 2897
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9313 alpha= 18.8272 beta= 10.7727
[1] 2898
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9957 alpha= 18.4869 beta= 10.4779
[1] 2899
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9681 alpha= 18.9505 beta= 10.4583
[1] 2900
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0106 alpha= 18.8067 beta= 10.4698
[1] 2901
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7864 alpha= 18.9808 beta= 10.4759
[1] 2902
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5352 alpha= 19.5344 beta= 10.4778
[1] 2903
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3048 alpha= 19.553 beta= 10.4717
[1] 2904
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4533 alpha= 19.8943 beta= 10.5366
[1] 2905
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.341 alpha= 19.8495 beta= 10.5274
[1] 2906
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4557 alpha= 19.8966 beta= 10.5365
[1] 2907
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.464 alpha= 19.809 beta= 10.5274
[1] 2908
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4245 alpha= 19.8686 beta= 10.5283
[1] 2909
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4563 alpha= 19.8668 beta= 10.5272
[1] 2910
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4747 alpha= 19.9459 beta= 10.5053
[1] 2911
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3768 alpha= 19.7623 beta= 10.48
[1] 2912
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4252 alpha= 19.7817 beta= 10.4386
[1] 2913
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.816 alpha= 23.2473 beta= 15.0943
[1] 2914
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9217 alpha= 21.3386 beta= 15.1121
[1] 2915
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0081 alpha= 21.1729 beta= 15.1252
[1] 2916
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0602 alpha= 21.0914 beta= 15.1601
[1] 2917
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.924 alpha= 21.3302 beta= 15.132
[1] 2918
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8167 alpha= 21.5837 beta= 15.1182
[1] 2919
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7952 alpha= 21.5824 beta= 15.0416
[1] 2920
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.77 alpha= 21.641 beta= 15.0418
[1] 2921
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7462 alpha= 21.694 beta= 15.0368
[1] 2922
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7954 alpha= 21.5831 beta= 15.0244
[1] 2923
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8056 alpha= 21.5326 beta= 15.0177
[1] 2924
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7886 alpha= 21.5772 beta= 15.0181
[1] 2925
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7955 alpha= 21.6371 beta= 15.0593
[1] 2926
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7412 alpha= 21.7363 beta= 15.0509
[1] 2927
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.6784 alpha= 21.8645 beta= 15.0531
[1] 2928
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7033 alpha= 21.9527 beta= 15.1702
[1] 2929
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.6744 alpha= 21.9965 beta= 15.1533
[1] 2930
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.6594 alpha= 22.0273 beta= 15.1309
[1] 2931
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.6769 alpha= 22.0332 beta= 15.1307
[1] 2932
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.684 alpha= 22.0189 beta= 15.1287
[1] 2933
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7272 alpha= 21.9814 beta= 15.1434
[1] 2934
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7229 alpha= 21.9986 beta= 15.1221
[1] 2935
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7934 alpha= 21.8798 beta= 15.1229
[1] 2936
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8695 alpha= 21.7926 beta= 15.157
[1] 2937
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8458 alpha= 21.8487 beta= 15.1611
[1] 2938
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8686 alpha= 21.8023 beta= 15.16
[1] 2939
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9373 alpha= 21.6723 beta= 15.1605
[1] 2940
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9539 alpha= 21.6728 beta= 15.1722
[1] 2941
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9946 alpha= 21.5562 beta= 15.164
[1] 2942
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.929 alpha= 21.6907 beta= 15.1476
[1] 2943
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9268 alpha= 21.7142 beta= 15.1414
[1] 2944
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9401 alpha= 21.7157 beta= 15.1444
[1] 2945
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9466 alpha= 21.7145 beta= 15.1343
[1] 2946
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9041 alpha= 21.7944 beta= 15.1291
[1] 2947
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9056 alpha= 21.7731 beta= 15.0934
[1] 2948
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.913 alpha= 21.7407 beta= 15.11
[1] 2949
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9391 alpha= 21.7026 beta= 15.1099
[1] 2950
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.903 alpha= 21.8118 beta= 15.131
[1] 2951
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9969 alpha= 21.6624 beta= 15.152
[1] 2952
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9581 alpha= 21.7797 beta= 15.1533
[1] 2953
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0565 alpha= 21.6736 beta= 15.2404
[1] 2954
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9895 alpha= 21.8265 beta= 15.2642
[1] 2955
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9756 alpha= 21.8625 beta= 15.2518
[1] 2956
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9423 alpha= 22.1299 beta= 15.3925
[1] 2957
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7959 alpha= 22.3747 beta= 15.3145
[1] 2958
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7991 alpha= 22.378 beta= 15.3147
[1] 2959
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8051 alpha= 22.3926 beta= 15.3138
[1] 2960
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7564 alpha= 22.4714 beta= 15.293
[1] 2961
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7491 alpha= 22.493 beta= 15.2836
[1] 2962
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7337 alpha= 22.6255 beta= 15.3888
[1] 2963
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7745 alpha= 22.5545 beta= 15.3828
[1] 2964
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7713 alpha= 22.5543 beta= 15.3827
[1] 2965
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7647 alpha= 22.5628 beta= 15.3836
[1] 2966
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7685 alpha= 22.5495 beta= 15.3843
[1] 2967
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.751 alpha= 22.5989 beta= 15.3901
[1] 2968
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7583 alpha= 22.6014 beta= 15.4019
[1] 2969
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7187 alpha= 22.6761 beta= 15.3929
[1] 2970
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7685 alpha= 22.6206 beta= 15.4324
[1] 2971
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7695 alpha= 22.6195 beta= 15.4342
[1] 2972
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7697 alpha= 22.6557 beta= 15.4495
[1] 2973
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7616 alpha= 22.6717 beta= 15.4594
[1] 2974
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7707 alpha= 22.6733 beta= 15.4594
[1] 2975
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7346 alpha= 22.7375 beta= 15.4479
[1] 2976
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8211 alpha= 22.7304 beta= 15.618
[1] 2977
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7362 alpha= 22.8975 beta= 15.665
[1] 2978
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7586 alpha= 22.8743 beta= 15.6708
[1] 2979
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.7581 alpha= 22.8534 beta= 15.6192
[1] 2980
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8435 alpha= 22.6508 beta= 15.6312
[1] 2981
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8443 alpha= 22.6567 beta= 15.6312
[1] 2982
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8279 alpha= 22.7015 beta= 15.6367
[1] 2983
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8383 alpha= 22.6779 beta= 15.6385
[1] 2984
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.8592 alpha= 22.6155 beta= 15.6197
[1] 2985
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.88 alpha= 22.5759 beta= 15.6303
[1] 2986
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.885 alpha= 22.5722 beta= 15.6307
[1] 2987
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.919 alpha= 22.5076 beta= 15.6133
[1] 2988
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9311 alpha= 22.4776 beta= 15.6098
[1] 2989
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9386 alpha= 22.4634 beta= 15.6103
[1] 2990
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9478 alpha= 22.4525 beta= 15.6134
[1] 2991
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9612 alpha= 22.4275 beta= 15.6242
[1] 2992
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 25.9585 alpha= 22.4268 beta= 15.6411
[1] 2993
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0054 alpha= 22.3507 beta= 15.6664
[1] 2994
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0455 alpha= 22.2874 beta= 15.6801
[1] 2995
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0579 alpha= 22.2493 beta= 15.675
[1] 2996
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0696 alpha= 22.2314 beta= 15.6751
[1] 2997
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0527 alpha= 22.2757 beta= 15.6883
[1] 2998
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1338 alpha= 22.2512 beta= 15.9106
[1] 2999
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0732 alpha= 22.3135 beta= 15.8478
[1] 3000
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0687 alpha= 22.3242 beta= 15.85
[1] 3001
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0985 alpha= 22.2651 beta= 15.8501
[1] 3002
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1076 alpha= 22.2371 beta= 15.8397
[1] 3003
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.0573 alpha= 22.3401 beta= 15.8567
[1] 3004
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.1831 alpha= 21.992 beta= 15.7018
[1] 3005
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2365 alpha= 21.8823 beta= 15.6969
[1] 3006
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.192 alpha= 21.9063 beta= 15.6181
[1] 3007
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2317 alpha= 21.7701 beta= 15.5576
[1] 3008
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.2868 alpha= 21.6636 beta= 15.5939
[1] 3009
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3291 alpha= 21.5734 beta= 15.6102
[1] 3010
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3803 alpha= 21.4613 beta= 15.6429
[1] 3011
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3403 alpha= 21.5132 beta= 15.6437
[1] 3012
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.359 alpha= 21.4628 beta= 15.6439
[1] 3013
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3735 alpha= 21.2976 beta= 15.5389
[1] 3014
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3656 alpha= 21.302 beta= 15.5395
[1] 3015
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4031 alpha= 21.1644 beta= 15.5072
[1] 3016
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4323 alpha= 21.1226 beta= 15.5478
[1] 3017
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4293 alpha= 21.0998 beta= 15.5392
[1] 3018
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4987 alpha= 20.9672 beta= 15.5379
[1] 3019
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5384 alpha= 20.9095 beta= 15.5737
[1] 3020
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5494 alpha= 20.9085 beta= 15.5993
[1] 3021
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5368 alpha= 20.9368 beta= 15.5993
[1] 3022
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5485 alpha= 20.9206 beta= 15.5797
[1] 3023
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5688 alpha= 20.8901 beta= 15.5883
[1] 3024
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5613 alpha= 20.8835 beta= 15.5789
[1] 3025
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5731 alpha= 20.8612 beta= 15.6056
[1] 3026
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5759 alpha= 20.8507 beta= 15.6087
[1] 3027
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5674 alpha= 20.864 beta= 15.6089
[1] 3028
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5794 alpha= 20.8277 beta= 15.5986
[1] 3029
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6067 alpha= 20.7749 beta= 15.5976
[1] 3030
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6128 alpha= 20.7632 beta= 15.6041
[1] 3031
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5846 alpha= 20.7809 beta= 15.5657
[1] 3032
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6148 alpha= 20.7231 beta= 15.5617
[1] 3033
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6257 alpha= 20.7114 beta= 15.5619
[1] 3034
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5778 alpha= 20.8219 beta= 15.5615
[1] 3035
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6209 alpha= 20.7383 beta= 15.5596
[1] 3036
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6339 alpha= 20.7379 beta= 15.5656
[1] 3037
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6567 alpha= 20.6954 beta= 15.5621
[1] 3038
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6558 alpha= 20.7052 beta= 15.557
[1] 3039
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6324 alpha= 20.7629 beta= 15.5375
[1] 3040
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6115 alpha= 20.7907 beta= 15.5186
[1] 3041
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6692 alpha= 20.715 beta= 15.5974
[1] 3042
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7105 alpha= 20.6576 beta= 15.6322
[1] 3043
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7199 alpha= 20.6274 beta= 15.6298
[1] 3044
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.746 alpha= 20.5761 beta= 15.6426
[1] 3045
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7544 alpha= 20.5726 beta= 15.6509
[1] 3046
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7882 alpha= 20.5109 beta= 15.6673
[1] 3047
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7795 alpha= 20.5557 beta= 15.6873
[1] 3048
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.756 alpha= 20.6085 beta= 15.6769
[1] 3049
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7087 alpha= 20.712 beta= 15.6905
[1] 3050
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6819 alpha= 20.7645 beta= 15.6841
[1] 3051
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7122 alpha= 20.7085 beta= 15.6973
[1] 3052
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6653 alpha= 20.7822 beta= 15.668
[1] 3053
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6998 alpha= 20.739 beta= 15.7092
[1] 3054
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7495 alpha= 20.6517 beta= 15.7346
[1] 3055
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7708 alpha= 20.6171 beta= 15.73
[1] 3056
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8156 alpha= 20.5495 beta= 15.7603
[1] 3057
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8568 alpha= 20.4709 beta= 15.7654
[1] 3058
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8218 alpha= 20.5452 beta= 15.7857
[1] 3059
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8267 alpha= 20.5369 beta= 15.7865
[1] 3060
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8355 alpha= 20.5402 beta= 15.7919
[1] 3061
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8466 alpha= 20.5113 beta= 15.794
[1] 3062
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.849 alpha= 20.5245 beta= 15.8312
[1] 3063
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9189 alpha= 20.3814 beta= 15.8479
[1] 3064
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8128 alpha= 20.6432 beta= 15.9152
[1] 3065
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8167 alpha= 20.6264 beta= 15.9016
[1] 3066
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7989 alpha= 20.6576 beta= 15.8976
[1] 3067
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8129 alpha= 20.6368 beta= 15.904
[1] 3068
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.822 alpha= 20.6132 beta= 15.9046
[1] 3069
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7938 alpha= 20.6709 beta= 15.8961
[1] 3070
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8005 alpha= 20.6681 beta= 15.8905
[1] 3071
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8058 alpha= 20.6396 beta= 15.8915
[1] 3072
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7903 alpha= 20.6713 beta= 15.8951
[1] 3073
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7874 alpha= 20.6423 beta= 15.8946
[1] 3074
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7198 alpha= 20.7784 beta= 15.8899
[1] 3075
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8016 alpha= 20.5761 beta= 15.882
[1] 3076
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7247 alpha= 20.7391 beta= 15.8962
[1] 3077
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7589 alpha= 20.6662 beta= 15.9118
[1] 3078
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8215 alpha= 20.5191 beta= 15.882
[1] 3079
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7964 alpha= 20.5796 beta= 15.8854
[1] 3080
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7565 alpha= 20.6794 beta= 15.8821
[1] 3081
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7724 alpha= 20.6632 beta= 15.8885
[1] 3082
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.782 alpha= 20.6194 beta= 15.8864
[1] 3083
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8142 alpha= 20.593 beta= 15.9174
[1] 3084
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7766 alpha= 20.6689 beta= 15.9069
[1] 3085
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7941 alpha= 20.6517 beta= 15.9349
[1] 3086
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7753 alpha= 20.7022 beta= 15.9833
[1] 3087
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7533 alpha= 20.7311 beta= 15.9562
[1] 3088
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7409 alpha= 20.7426 beta= 15.9598
[1] 3089
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6961 alpha= 20.7982 beta= 15.9667
[1] 3090
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7205 alpha= 20.7801 beta= 15.9758
[1] 3091
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7042 alpha= 20.7777 beta= 15.9671
[1] 3092
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7122 alpha= 20.7431 beta= 15.9769
[1] 3093
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.705 alpha= 20.7471 beta= 15.9715
[1] 3094
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6484 alpha= 20.8934 beta= 15.9638
[1] 3095
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6516 alpha= 20.9109 beta= 15.9651
[1] 3096
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6704 alpha= 20.8536 beta= 15.9884
[1] 3097
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6361 alpha= 20.9307 beta= 15.9889
[1] 3098
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6348 alpha= 20.9036 beta= 15.9649
[1] 3099
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6321 alpha= 20.9488 beta= 15.9905
[1] 3100
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6079 alpha= 21.0066 beta= 15.9949
[1] 3101
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6034 alpha= 20.9866 beta= 15.9835
[1] 3102
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6387 alpha= 20.9789 beta= 16.0846
[1] 3103
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6545 alpha= 20.9631 beta= 16.094
[1] 3104
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6121 alpha= 21.0192 beta= 16.0773
[1] 3105
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5324 alpha= 21.1309 beta= 16.0559
[1] 3106
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5334 alpha= 21.1412 beta= 16.0746
[1] 3107
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5632 alpha= 21.1352 beta= 16.0898
[1] 3108
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5329 alpha= 21.1601 beta= 16.112
[1] 3109
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5323 alpha= 21.1644 beta= 16.11
[1] 3110
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5198 alpha= 21.1863 beta= 16.0975
[1] 3111
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5539 alpha= 21.0968 beta= 16.07
[1] 3112
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5708 alpha= 21.0765 beta= 16.0703
[1] 3113
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5367 alpha= 21.0954 beta= 16.06
[1] 3114
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5479 alpha= 21.0743 beta= 16.0239
[1] 3115
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.557 alpha= 21.0642 beta= 16.0371
[1] 3116
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5777 alpha= 21.076 beta= 16.0347
[1] 3117
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5599 alpha= 21.0356 beta= 16.0371
[1] 3118
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5874 alpha= 21.0638 beta= 16.0611
[1] 3119
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5542 alpha= 21.0889 beta= 16.0624
[1] 3120
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5189 alpha= 21.095 beta= 15.9813
[1] 3121
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3607 alpha= 21.3976 beta= 15.9555
[1] 3122
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.3511 alpha= 21.4427 beta= 16.0202
[1] 3123
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4379 alpha= 21.2509 beta= 16.0357
[1] 3124
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.581 alpha= 20.8143 beta= 15.7573
[1] 3125
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5996 alpha= 20.7772 beta= 15.7438
[1] 3126
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5408 alpha= 20.8877 beta= 15.7818
[1] 3127
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6292 alpha= 20.7401 beta= 15.7988
[1] 3128
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5647 alpha= 20.8927 beta= 15.7878
[1] 3129
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4663 alpha= 21.0468 beta= 15.7345
[1] 3130
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4187 alpha= 21.1216 beta= 15.7431
[1] 3131
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4422 alpha= 21.1079 beta= 15.7606
[1] 3132
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4176 alpha= 21.1422 beta= 15.7579
[1] 3133
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4401 alpha= 21.052 beta= 15.7616
[1] 3134
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.4475 alpha= 21.0329 beta= 15.7538
[1] 3135
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.466 alpha= 21.0135 beta= 15.7477
[1] 3136
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.5064 alpha= 20.8954 beta= 15.7479
[1] 3137
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6231 alpha= 20.768 beta= 15.8248
[1] 3138
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6113 alpha= 20.7215 beta= 15.8184
[1] 3139
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.6127 alpha= 20.6484 beta= 15.7735
[1] 3140
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.7797 alpha= 20.3416 beta= 15.848
[1] 3141
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8257 alpha= 20.3978 beta= 15.8317
[1] 3142
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9192 alpha= 20.1932 beta= 15.851
[1] 3143
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.079 alpha= 20.0998 beta= 15.8426
[1] 3144
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1219 alpha= 19.9829 beta= 15.8598
[1] 3145
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0793 alpha= 19.9146 beta= 15.8762
[1] 3146
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2392 alpha= 19.8157 beta= 15.9202
[1] 3147
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0996 alpha= 19.9363 beta= 15.9907
[1] 3148
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0488 alpha= 19.9663 beta= 15.984
[1] 3149
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0238 alpha= 20.0069 beta= 15.9865
[1] 3150
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0279 alpha= 20.0911 beta= 15.9937
[1] 3151
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0407 alpha= 19.9839 beta= 15.9705
[1] 3152
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0203 alpha= 20.047 beta= 15.9626
[1] 3153
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0589 alpha= 19.9695 beta= 15.976
[1] 3154
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0405 alpha= 20.0195 beta= 15.8969
[1] 3155
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0248 alpha= 19.9662 beta= 15.8773
[1] 3156
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0107 alpha= 20.0553 beta= 15.8853
[1] 3157
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0114 alpha= 20.0382 beta= 15.8854
[1] 3158
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0101 alpha= 20.0592 beta= 15.8798
[1] 3159
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0254 alpha= 19.9906 beta= 15.8886
[1] 3160
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0244 alpha= 20.0198 beta= 15.8879
[1] 3161
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.164 alpha= 19.9175 beta= 15.8883
[1] 3162
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9896 alpha= 20.0386 beta= 15.8488
[1] 3163
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9492 alpha= 20.1322 beta= 15.8454
[1] 3164
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9603 alpha= 20.1196 beta= 15.8522
[1] 3165
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9918 alpha= 20.0701 beta= 15.8853
[1] 3166
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9649 alpha= 20.1583 beta= 15.9253
[1] 3167
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0069 alpha= 20.0688 beta= 15.9366
[1] 3168
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0762 alpha= 19.9157 beta= 15.901
[1] 3169
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1631 alpha= 20.0905 beta= 15.8682
[1] 3170
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0001 alpha= 20.0641 beta= 15.9001
[1] 3171
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.952 alpha= 20.1465 beta= 15.9096
[1] 3172
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9907 alpha= 20.1318 beta= 15.9236
[1] 3173
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.014 alpha= 20.0222 beta= 15.9251
[1] 3174
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0327 alpha= 20.1102 beta= 15.9669
[1] 3175
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.914 alpha= 20.1022 beta= 15.9529
[1] 3176
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9342 alpha= 20.2547 beta= 15.9624
[1] 3177
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0068 alpha= 20.0695 beta= 15.8967
[1] 3178
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0041 alpha= 20.0351 beta= 15.8936
[1] 3179
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.036 alpha= 19.9174 beta= 15.849
[1] 3180
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0404 alpha= 19.935 beta= 15.847
[1] 3181
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0505 alpha= 19.9099 beta= 15.8562
[1] 3182
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0294 alpha= 19.913 beta= 15.8575
[1] 3183
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0305 alpha= 19.9346 beta= 15.858
[1] 3184
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0549 alpha= 19.9057 beta= 15.8604
[1] 3185
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1209 alpha= 19.7593 beta= 15.8649
[1] 3186
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1354 alpha= 19.6862 beta= 15.8808
[1] 3187
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0681 alpha= 19.8518 beta= 15.8573
[1] 3188
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0584 alpha= 19.8512 beta= 15.8549
[1] 3189
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0657 alpha= 19.8762 beta= 15.8544
[1] 3190
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1309 alpha= 19.9223 beta= 15.8577
[1] 3191
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0485 alpha= 19.8993 beta= 15.8488
[1] 3192
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1966 alpha= 19.8287 beta= 15.8502
[1] 3193
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0826 alpha= 19.8672 beta= 15.8493
[1] 3194
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0654 alpha= 19.8681 beta= 15.8463
[1] 3195
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0753 alpha= 19.8435 beta= 15.8363
[1] 3196
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0714 alpha= 19.8939 beta= 15.8235
[1] 3197
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0307 alpha= 19.9179 beta= 15.8171
[1] 3198
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0049 alpha= 19.9923 beta= 15.8396
[1] 3199
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.95 alpha= 20.0207 beta= 15.8405
[1] 3200
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0576 alpha= 19.8184 beta= 15.8587
[1] 3201
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0356 alpha= 19.8831 beta= 15.8042
[1] 3202
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1266 alpha= 19.6727 beta= 15.9009
[1] 3203
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1583 alpha= 19.6981 beta= 15.8893
[1] 3204
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1428 alpha= 19.7074 beta= 15.8648
[1] 3205
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0018 alpha= 19.9094 beta= 15.7586
[1] 3206
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9987 alpha= 19.9171 beta= 15.7562
[1] 3207
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8237 alpha= 20.1566 beta= 15.7509
[1] 3208
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9399 alpha= 20.0078 beta= 15.7541
[1] 3209
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9313 alpha= 20.0942 beta= 15.7169
[1] 3210
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8589 alpha= 20.2557 beta= 15.7071
[1] 3211
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0517 alpha= 20.223 beta= 15.8254
[1] 3212
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0005 alpha= 20.1856 beta= 15.8235
[1] 3213
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9531 alpha= 20.1576 beta= 15.8015
[1] 3214
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9622 alpha= 20.2428 beta= 15.8169
[1] 3215
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.2616 alpha= 20.2358 beta= 15.8399
[1] 3216
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.8824 alpha= 20.2807 beta= 15.835
[1] 3217
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0236 alpha= 20.231 beta= 15.8395
[1] 3218
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9207 alpha= 20.1082 beta= 15.7358
[1] 3219
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0538 alpha= 20.1336 beta= 15.7071
[1] 3220
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 26.9592 alpha= 20.0442 beta= 15.6353
[1] 3221
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0503 alpha= 19.9288 beta= 15.6748
[1] 3222
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0268 alpha= 19.7994 beta= 15.6671
[1] 3223
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.0974 alpha= 19.6922 beta= 15.6698
[1] 3224
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.203 alpha= 19.7204 beta= 15.6566
[1] 3225
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1816 alpha= 19.5591 beta= 15.6805
[1] 3226
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.1991 alpha= 19.4669 beta= 15.6571
[1] 3227
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3631 alpha= 19.2213 beta= 15.6536
[1] 3228
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3254 alpha= 19.2861 beta= 15.6587
[1] 3229
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.3666 alpha= 19.3077 beta= 15.6477
[1] 3230
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4411 alpha= 19.1432 beta= 15.6426
[1] 3231
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7098 alpha= 18.9729 beta= 15.5675
[1] 3232
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0238 alpha= 18.8167 beta= 15.5793
[1] 3233
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5732 alpha= 18.7866 beta= 15.5777
[1] 3234
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5754 alpha= 18.8496 beta= 15.5701
[1] 3235
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8385 alpha= 18.9559 beta= 15.5685
[1] 3236
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.518 alpha= 18.7289 beta= 15.558
[1] 3237
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.4477 alpha= 18.8368 beta= 15.5502
[1] 3238
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.823 alpha= 18.8151 beta= 15.5146
[1] 3239
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9039 alpha= 18.8426 beta= 15.5163
[1] 3240
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.5435 alpha= 18.7718 beta= 15.5083
[1] 3241
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1492 alpha= 18.6765 beta= 15.4883
[1] 3242
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7165 alpha= 18.6166 beta= 15.5952
[1] 3243
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0567 alpha= 18.6613 beta= 15.7029
[1] 3244
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8721 alpha= 18.7426 beta= 15.6959
[1] 3245
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1526 alpha= 18.735 beta= 15.7106
[1] 3246
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3048 alpha= 18.8296 beta= 15.7165
[1] 3247
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2481 alpha= 18.7652 beta= 15.7179
[1] 3248
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.299 alpha= 18.708 beta= 15.8165
[1] 3249
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8964 alpha= 18.8045 beta= 15.815
[1] 3250
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0831 alpha= 18.687 beta= 15.8259
[1] 3251
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.836 alpha= 18.4739 beta= 15.7287
[1] 3252
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7955 alpha= 18.2893 beta= 15.7438
[1] 3253
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8162 alpha= 18.245 beta= 15.7524
[1] 3254
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7562 alpha= 18.3768 beta= 15.7657
[1] 3255
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9039 alpha= 18.324 beta= 15.797
[1] 3256
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9766 alpha= 18.1582 beta= 15.7416
[1] 3257
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9724 alpha= 18.1505 beta= 15.7416
[1] 3258
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8418 alpha= 18.2387 beta= 15.7411
[1] 3259
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7848 alpha= 18.2387 beta= 15.7437
[1] 3260
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0593 alpha= 18.2011 beta= 15.7688
[1] 3261
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8777 alpha= 18.2417 beta= 15.7775
[1] 3262
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7099 alpha= 18.4604 beta= 15.7574
[1] 3263
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7534 alpha= 18.4028 beta= 15.7575
[1] 3264
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8506 alpha= 18.383 beta= 15.7259
[1] 3265
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7453 alpha= 18.3912 beta= 15.7348
[1] 3266
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0954 alpha= 18.309 beta= 15.7325
[1] 3267
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1023 alpha= 18.3419 beta= 15.7289
[1] 3268
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7235 alpha= 18.3525 beta= 15.7019
[1] 3269
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.8154 alpha= 18.3906 beta= 15.709
[1] 3270
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2019 alpha= 18.3717 beta= 15.685
[1] 3271
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1493 alpha= 18.4495 beta= 15.6794
[1] 3272
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.85 alpha= 18.3226 beta= 15.6492
[1] 3273
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0965 alpha= 18.3186 beta= 15.6337
[1] 3274
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.085 alpha= 18.2613 beta= 15.6478
[1] 3275
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0185 alpha= 18.347 beta= 15.6508
[1] 3276
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0778 alpha= 18.3283 beta= 15.666
[1] 3277
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.7359 alpha= 18.3789 beta= 15.658
[1] 3278
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.1969 alpha= 18.221 beta= 15.6644
[1] 3279
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9085 alpha= 18.2483 beta= 15.6517
[1] 3280
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.3032 alpha= 18.3276 beta= 15.6474
[1] 3281
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0149 alpha= 18.1493 beta= 15.6603
[1] 3282
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0654 alpha= 18.0508 beta= 15.6625
[1] 3283
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.011 alpha= 18.1338 beta= 15.6464
[1] 3284
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.974 alpha= 18.2118 beta= 15.6821
[1] 3285
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.0452 alpha= 18.2351 beta= 15.6893
[1] 3286
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 28.2161 alpha= 18.2693 beta= 15.7061
[1] 3287
Number of parameters (weights and biases) to estimate: 495
Nguyen-Widrow method
Scaling factor= 0.7018982
gamma= 27.9554 alpha= 18.2199 beta= 15.7041
Now, we can extract the objects and calculate MSEs and do the Diebold-Mariano test.
# betas_lasso <-complete_ML_set$betas_lasso
# betas_ridge <- complete_ML_set$betas_ridge
# betas_adalasso <- complete_ML_set$betas_adalasso
# betas_elastic_net <- complete_ML_set$betas_elastic_net
# betas_ada_elastic_net <- complete_ML_set$betas_ada_elastic_net
betas_bagging <- complete_ML_set$betas_bagging
betas_csr <- complete_ML_set$betas_csr
MSE_har <- complete_ML_set$MSE_HAR
# MSE_ridge <- complete_ML_set$MSE_ridge
# MSE_lasso <- complete_ML_set$MSE_lasso
# MSE_adalasso <- complete_ML_set$MSE_adalasso
# MSE_elastic_net <- complete_ML_set$MSE_elastic_net
# MSE_ada_elastic_net <- complete_ML_set$MSE_ada_elastic_net
MSE_bagging <- complete_ML_set$MSE_bagging
MSE_csr <- complete_ML_set$MSE_csr
MSE_rf <- complete_ML_set$MSE_random_forest
MSE_nn <- complete_ML_set$MSE_nnbr
cat('The MSE for the benchmark model is' , mean(MSE_har), '\n')
The MSE for the benchmark model is 0.3490074
# cat('The MSE for the ridge model relative to the benchmark is' , mean(MSE_ridge)/mean(MSE_har),'and its absolute value is',mean(MSE_ridge), '\n')
# cat('The MSE for the LASSO model relative to the benchmark is' , mean(MSE_lasso)/mean(MSE_har),'and its absolute value is',mean(MSE_lasso),'\n')
# cat('The MSE for the Adaptative Lasso model relative to the benchmark is' , mean(MSE_adalasso)/mean(MSE_har),'and its absolute value is',mean(MSE_adalasso), '\n')
# cat('The MSE for the Elastic Net model relative to the benchmark is' , mean(MSE_elastic_net)/mean(MSE_har),'and its absolute value is',mean(MSE_elastic_net), '\n')
# cat('The MSE for the Adaptative Elastic Net model relative to the benchmark is' , mean(MSE_ada_elastic_net)/mean(MSE_har), 'and its absolute value is',mean(MSE_ada_elastic_net),'\n')
cat('The MSE for the bagging model relative to the benchmark is' , mean(MSE_bagging)/mean(MSE_har), 'and its absolute value is',mean(MSE_bagging),'\n')
The MSE for the bagging model relative to the benchmark is 1.002099 and its absolute value is 0.3497399
cat('The MSE for the neural network relative to the benchmark is' , mean(MSE_nn)/mean(MSE_har), 'and its absolute value is',mean(MSE_nn),'\n')
The MSE for the neural network relative to the benchmark is 1.008286 and its absolute value is 0.3518993
cat('The MSE for the random forest relative to the benchmark is' , mean(MSE_rf)/mean(MSE_har), 'and its absolute value is',mean(MSE_rf),'\n')
The MSE for the random forest relative to the benchmark is 1.289836 and its absolute value is 0.4501622
cat('The MSE for the complete subset regression model relative to the benchmark is' , mean(MSE_csr)/mean(MSE_har), 'and its absolute value is',mean(MSE_csr),'\n')
The MSE for the complete subset regression model relative to the benchmark is 1.001758 and its absolute value is 0.349621
Now for the Diebold-Mariano test:
# dm.test(MSE_har, MSE_ridge)
# dm.test(MSE_har, MSE_lasso)
# dm.test(MSE_har, MSE_adalasso)
# dm.test(MSE_har, MSE_elastic_net)
dm.test(MSE_har, MSE_nn)
Diebold-Mariano Test
data: MSE_harMSE_nn
DM = 0.31772, Forecast horizon = 1, Loss function power = 2, p-value = 0.7507
alternative hypothesis: two.sided
dm.test(MSE_har, MSE_rf)
Diebold-Mariano Test
data: MSE_harMSE_rf
DM = -5.5339, Forecast horizon = 1, Loss function power = 2, p-value = 3.377e-08
alternative hypothesis: two.sided
dm.test(MSE_har, MSE_bagging)
Diebold-Mariano Test
data: MSE_harMSE_bagging
DM = 0.35744, Forecast horizon = 1, Loss function power = 2, p-value = 0.7208
alternative hypothesis: two.sided
dm.test(MSE_har, MSE_csr)
Diebold-Mariano Test
data: MSE_harMSE_csr
DM = 0.52439, Forecast horizon = 1, Loss function power = 2, p-value = 0.6
alternative hypothesis: two.sided
Now, for the variable importance
window_size <- 1000
y_var <- log(data.matrix(full_data$RV))
x_var <- log(data.matrix(full_data[,!names(full_data) %in% c('Date', 'RV', 'current_date')])) ##Here, I HAD to remove V, because it's NAN before 2008.
days <- dim(y_var)[[1]]
num_windows <- days - window_size
sd_matrix <- matrix(nrow = dim(x_var)[2], ncol = num_windows )
foreach (i = 1:num_windows) %do% {
foreach(j = 1:dim(x_var)[[2]]) %do% {
sd_matrix[j, i] <- sd(x_var[i:(window_size+i-1),j])
}
}
[[1]]
[[1]][[1]]
[1] 0.6437787
[[1]][[2]]
[1] 0.7008811
[[1]][[3]]
[1] 0.7822685
[[1]][[4]]
[1] 0.777176
[[1]][[5]]
[1] 0.6486606
[[1]][[6]]
[1] 0.6580034
[[1]][[7]]
[1] 0.8541724
[[1]][[8]]
[1] 0.663858
[[1]][[9]]
[1] 0.6844288
[[1]][[10]]
[1] 0.6584445
[[1]][[11]]
[1] 0.7432921
[[1]][[12]]
[1] 0.7499437
[[1]][[13]]
[1] 0.750562
[[1]][[14]]
[1] 0.8307165
[[1]][[15]]
[1] 0.8198825
[[1]][[16]]
[1] 0.6389881
[[1]][[17]]
[1] 0.8009013
[[1]][[18]]
[1] 0.6321333
[[1]][[19]]
[1] 0.6536279
[[1]][[20]]
[1] 0.7394108
[[1]][[21]]
[1] 0.6889332
[[1]][[22]]
[1] 0.7630375
[[1]][[23]]
[1] 0.6520976
[[1]][[24]]
[1] 0.7231253
[[1]][[25]]
[1] 0.7992034
[[1]][[26]]
[1] 0.7541687
[[1]][[27]]
[1] 0.6125448
[[1]][[28]]
[1] 0.6716369
[[1]][[29]]
[1] 0.68234
[[1]][[30]]
[1] 0.8185581
[[1]][[31]]
[1] 0.7093213
[[2]]
[[2]][[1]]
[1] 0.6450508
[[2]][[2]]
[1] 0.7016217
[[2]][[3]]
[1] 0.7824067
[[2]][[4]]
[1] 0.7786897
[[2]][[5]]
[1] 0.6489372
[[2]][[6]]
[1] 0.6578771
[[2]][[7]]
[1] 0.8542663
[[2]][[8]]
[1] 0.6644218
[[2]][[9]]
[1] 0.6843887
[[2]][[10]]
[1] 0.6587715
[[2]][[11]]
[1] 0.7439594
[[2]][[12]]
[1] 0.7502829
[[2]][[13]]
[1] 0.7509197
[[2]][[14]]
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[1] 0.6063632
[[999]][[14]]
[1] 0.6320191
[[999]][[15]]
[1] 0.5603868
[[999]][[16]]
[1] 0.5733214
[[999]][[17]]
[1] 0.7372712
[[999]][[18]]
[1] 0.50414
[[999]][[19]]
[1] 0.5868948
[[999]][[20]]
[1] 0.6145561
[[999]][[21]]
[1] 0.6896291
[[999]][[22]]
[1] 0.5521777
[[999]][[23]]
[1] 0.542047
[[999]][[24]]
[1] 0.5857843
[[999]][[25]]
[1] 0.5799157
[[999]][[26]]
[1] 0.7174688
[[999]][[27]]
[1] 0.6232627
[[999]][[28]]
[1] 0.5224365
[[999]][[29]]
[1] 0.5430474
[[999]][[30]]
[1] 0.5759303
[[999]][[31]]
[1] 0.6063676
[[1000]]
[[1000]][[1]]
[1] 0.5180277
[[1000]][[2]]
[1] 0.5938118
[[1000]][[3]]
[1] 0.691264
[[1000]][[4]]
[1] 0.8235431
[[1000]][[5]]
[1] 0.5774639
[[1000]][[6]]
[1] 0.6114201
[[1000]][[7]]
[1] 0.5952908
[[1000]][[8]]
[1] 0.6400049
[[1000]][[9]]
[1] 0.5873111
[[1000]][[10]]
[1] 0.5711911
[[1000]][[11]]
[1] 0.542376
[[1000]][[12]]
[1] 0.7739983
[[1000]][[13]]
[1] 0.6082316
[[1000]][[14]]
[1] 0.6341191
[[1000]][[15]]
[1] 0.5745373
[[1000]][[16]]
[1] 0.573615
[[1000]][[17]]
[1] 0.744266
[[1000]][[18]]
[1] 0.5043199
[[1000]][[19]]
[1] 0.5874067
[[1000]][[20]]
[1] 0.6154444
[[1000]][[21]]
[1] 0.689425
[[1000]][[22]]
[1] 0.5546605
[[1000]][[23]]
[1] 0.5434136
[[1000]][[24]]
[1] 0.5865417
[[1000]][[25]]
[1] 0.5814868
[[1000]][[26]]
[1] 0.7179804
[[1000]][[27]]
[1] 0.623894
[[1000]][[28]]
[1] 0.522816
[[1000]][[29]]
[1] 0.5437979
[[1000]][[30]]
[1] 0.5776096
[[1000]][[31]]
[1] 0.6077928
[ reached getOption("max.print") -- omitted 2287 entries ]
library(reshape2)
variable_importance_matrix_bagging <- data.frame(betas_bagging/sd_matrix)
variable_importance_matrix_bagging$variable <- colnames(x_var)
dfm_bag <- melt(variable_importance_matrix_bagging, id.vars = "variable",factorAsStrings = TRUE )
Duplicate column names found in molten data.table. Setting unique names using 'make.names'
variable_importance_matrix_csr <- data.frame(betas_csr/sd_matrix)
variable_importance_matrix_csr$variable <- colnames(x_var)
dfm_csr <- melt(variable_importance_matrix_csr, id.vars = "variable",factorAsStrings = TRUE )
Duplicate column names found in molten data.table. Setting unique names using 'make.names'
ggplot(dfm_csr) + geom_point(aes(x = variable.1, y = value, color = variable)) +labs(x = "", y = "") + labs(colour = NULL)
ggplot(dfm_bag) + geom_point(aes(x = variable.1, y = value, color = variable)) +labs(x = "", y = "") + labs(colour = NULL)
NA
NA
Random forest variable importance:
foreach (i = 1:num_windows) %do% {
y <- y_var[i:(window_size+i-1)]
x <- x_var[i:(window_size+i-1),]
z <- data.frame(x)
z$y <- y
rf_importance[,i] <- importance(rangerts::rangerts(y~ ., data = z,
num.trees = 100,
mtry = floor(sqrt(ncol(z))),
replace = T, # default = T too
seed = 1,
bootstrap.ts = "moving",
block.size = 365, importance = "impurity"))}
[[1]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.663404 51.793794 22.997820 7.445958 8.658223 10.522115 7.249948 9.421102 6.650983 7.253076 8.386610
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.629168 14.236982 14.624559 11.306954 7.908908 10.771138 5.792107 3.532424 4.705959 12.758695 7.070851
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.259053 10.032810 9.358113 4.252450 3.303696 5.313476 14.563817 13.902143 9.626593
[[2]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.639896 51.879861 22.486028 7.452059 8.995554 10.478465 7.437662 9.497545 6.750204 7.399947 8.103183
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.754919 13.859043 14.515066 11.261641 8.116851 10.635658 5.508447 3.372984 4.794381 12.815570 6.255335
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.150790 9.978263 9.176042 4.365287 3.177550 5.442828 15.630743 14.241617 9.762456
[[3]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.579707 51.506937 22.654409 7.710197 8.463961 11.478292 7.176407 10.087604 6.579743 7.096285 8.213644
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.111730 14.028142 13.325958 11.155031 8.518119 10.460300 5.292269 3.690745 4.895586 13.165083 6.265162
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.077396 9.483034 9.064304 4.618936 3.142503 5.425942 15.260538 14.286780 10.207651
[[4]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.691320 51.419261 21.980308 7.523735 8.330623 11.390425 6.972782 10.196119 6.695945 7.100514 8.570075
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.174453 15.189779 13.519867 10.710952 9.168210 10.468959 5.931249 3.463593 4.919056 14.186228 6.290273
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.010320 9.707366 9.130072 4.253103 3.280100 5.192412 13.830112 14.265606 10.098259
[[5]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.757543 51.656545 22.397701 7.573093 8.364852 11.429315 7.031855 10.056632 6.528079 7.229425 8.346574
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.084652 14.159927 13.233942 10.961489 8.678034 10.383989 6.175086 3.544616 4.560319 14.053420 6.172883
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.987915 9.685804 9.040105 4.470164 3.302444 5.404921 15.372014 13.852986 10.261601
[[6]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.777457 51.648809 22.185540 7.531828 8.499712 11.346121 6.816555 9.867540 6.639935 7.100581 8.459457
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.148096 13.900278 13.338444 11.206768 8.639300 10.304731 5.982322 3.562201 4.596915 14.266827 6.322453
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.943672 9.817273 9.006549 4.227891 3.494046 5.381959 15.515073 14.054447 10.265592
[[7]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.638668 51.175305 22.391789 7.148656 8.386225 11.476907 7.258761 9.606752 6.927018 7.291308 8.612179
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.430509 13.605077 13.131754 10.975221 8.642384 10.845045 6.276361 3.731207 4.908557 14.043134 7.132324
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.802548 9.553875 9.074693 4.160362 3.464897 5.476489 14.658863 13.663634 10.179760
[[8]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.143291 50.936395 21.921758 7.436333 8.560013 11.679138 7.193012 9.667840 7.126742 7.472630 8.676958
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.684426 13.327270 12.810113 10.816935 8.603692 11.138677 6.566343 3.399632 4.578343 13.955317 5.938143
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.652607 9.861048 9.147348 4.310228 3.708408 5.411037 15.931232 14.071805 10.062588
[[9]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.708372 51.211766 22.208898 7.607089 8.750800 11.354754 6.176706 9.684996 6.895740 7.420227 9.657319
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.569256 14.505284 13.390642 11.080595 8.689938 11.241247 6.363411 3.361042 4.701819 13.592823 6.040597
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.942211 9.905065 9.300317 3.860824 3.723681 5.559320 15.366676 13.820989 10.158948
[[10]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.629049 51.385301 22.413275 7.178449 8.493460 11.595946 6.252190 9.971044 7.094662 7.021941 9.627048
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.927246 14.535576 13.149277 11.194190 8.367924 11.001665 6.495351 3.422440 4.759824 13.282413 5.985024
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.902939 9.127253 9.267417 4.010166 3.722688 5.511614 15.496494 13.640033 10.262413
[[11]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.059751 50.224933 22.726683 7.347424 8.772511 11.735908 6.020274 9.975123 6.945389 7.341179 9.698664
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.370220 14.549881 12.961616 11.227276 8.313820 11.122917 6.432968 3.269954 5.191884 13.428307 6.091819
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.055486 9.847372 8.522937 4.139461 3.667274 5.202037 15.540836 13.857119 10.010051
[[12]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.055413 50.838148 22.918749 7.292704 8.920097 12.200551 5.991062 9.864984 6.932889 7.517859 9.426549
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.347891 14.498678 12.920120 10.775475 8.343583 10.561312 6.588970 3.515319 4.842578 13.648350 7.263649
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.783057 8.918350 8.728070 4.355328 3.496040 4.867745 14.709624 13.856243 10.519308
[[13]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.818021 49.915672 22.789275 7.569629 9.010922 11.046552 6.201838 10.222835 7.072542 7.481396 9.555430
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.101890 14.687028 12.800520 10.643700 8.436371 11.520150 6.447005 3.474452 4.834829 13.741396 7.317273
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.854741 9.610604 8.584644 4.392206 3.688774 4.973516 14.605434 13.864862 10.576756
[[14]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.467420 49.815301 22.932363 7.595035 8.460918 10.196479 5.898237 10.234689 7.256272 7.376792 9.316610
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.442498 15.400804 14.209363 10.689361 8.488151 11.662906 7.170724 3.750380 4.576238 13.497041 7.648655
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.953323 9.566951 8.928201 4.201657 3.377443 4.976712 13.321111 13.537206 10.876332
[[15]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.413223 49.815016 23.021310 7.627086 8.906288 9.938388 6.229139 10.286496 7.259081 7.366837 8.996456
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.936323 14.150176 14.720568 10.927031 8.528272 11.212768 7.374957 3.651140 4.826464 11.636678 7.210867
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.138518 9.250736 10.804148 4.269719 3.330543 4.563696 14.620105 13.661314 10.095374
[[16]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.705776 49.911666 23.370523 7.520118 9.125390 10.299203 6.139599 10.323128 6.919787 7.242052 8.801179
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.899618 13.494518 14.337620 10.223578 8.739716 11.020976 7.337788 3.685298 5.107564 13.590829 7.942728
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.710740 9.014358 9.234200 4.358369 3.437320 4.859329 14.902813 13.557065 10.116438
[[17]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.280429 49.563898 23.449530 7.194187 8.957021 10.026820 5.965624 10.766313 6.839735 7.107760 9.263921
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.371068 14.015809 14.253577 10.991208 8.643131 11.094425 7.401172 3.896504 5.028996 11.964386 7.358882
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.857022 8.589340 11.115977 4.414491 3.423712 4.748832 14.936163 13.604299 9.902709
[[18]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.284018 49.597099 23.505668 7.556533 8.940120 10.176577 5.756112 10.706576 6.969324 7.154318 9.716716
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.034291 13.952626 14.229930 11.563085 8.840271 10.431607 6.941544 3.822870 4.987438 12.009363 7.091304
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.869995 8.951943 10.977000 4.348677 3.391209 4.807574 14.735157 13.640961 9.902186
[[19]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.266070 48.933281 23.625314 7.921859 8.904263 10.542335 6.010604 10.803808 6.962655 7.051665 9.416120
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.098314 14.389024 14.446253 10.537290 8.699993 11.535011 6.912071 3.679882 4.627296 11.653954 7.621503
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.167263 9.796750 10.321972 4.232169 3.242679 5.067951 14.847160 13.463667 10.319855
[[20]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.325612 49.086403 23.904525 8.065246 8.893809 10.174907 5.889849 11.069064 6.791141 7.463633 8.962024
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.147808 15.271516 14.006439 10.440548 8.643549 11.627709 7.058147 3.365214 4.563943 11.822457 7.598972
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.235876 8.699724 10.626708 4.489158 3.271473 5.118767 14.739385 12.661071 10.180874
[[21]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.263505 49.796686 23.362071 7.842105 8.969053 10.083670 6.344676 11.042743 6.883554 7.134683 8.795108
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.808242 14.374320 14.536599 11.648569 8.256932 10.491085 6.890525 3.345566 4.739500 12.189586 7.101970
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.165162 8.899357 10.180012 4.678464 3.287922 5.501617 14.722787 13.204561 10.289509
[[22]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.398137 49.192377 23.084457 7.982421 9.214194 10.209596 6.133252 11.432765 6.845293 7.071582 9.123975
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.806394 14.240781 14.863292 10.300939 8.068677 11.586905 6.777790 3.388452 5.156740 11.993881 7.641589
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.200545 8.729446 10.169794 4.486429 3.596939 5.210352 14.577604 13.640549 10.287969
[[23]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.897920 49.151094 25.174014 7.923134 9.425928 9.867710 6.434914 9.670962 6.601875 8.393483 9.236973
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.862206 14.044311 15.219949 11.766131 8.398113 10.925595 6.316408 3.548355 4.969107 11.744556 7.351608
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.072652 8.877529 10.174339 4.162533 3.113702 5.395677 14.737879 13.563646 10.756196
[[24]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.887177 49.641503 24.512175 8.005032 9.193657 9.993401 6.062722 9.931637 6.535879 8.587930 8.799106
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.055053 14.558619 14.788480 11.813498 9.064170 11.178598 6.156516 3.416675 4.774625 12.038950 7.140020
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.333356 8.654072 10.481551 4.262437 3.422152 5.099884 14.927883 13.357208 10.053989
[[25]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.777751 49.653222 24.282351 8.319189 9.154626 10.103426 6.517807 9.416483 6.583882 8.951683 9.193889
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.188492 14.495622 14.124985 10.692476 8.755713 12.602526 6.295453 3.412225 4.824797 12.027515 7.420256
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.082720 8.641758 10.057039 4.297506 3.517977 5.305303 14.756870 13.241989 9.889540
[[26]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.051972 49.849087 24.079704 8.103206 9.121961 10.228980 6.148065 11.176648 6.728961 7.320178 9.362952
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.361211 14.819424 14.126714 10.639176 8.477171 12.340661 6.450853 3.584512 4.607800 11.931143 7.192388
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.193956 8.589167 9.550715 4.813251 3.371411 5.273020 14.654794 13.258108 10.860509
[[27]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.043217 49.841013 23.889063 7.797238 7.394013 9.870778 6.082389 11.563241 6.543908 7.491733 9.833598
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.531126 16.715859 13.939162 9.976641 8.791505 13.038004 6.582013 3.715390 4.214223 12.180191 7.252932
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.312164 8.898697 9.714213 4.568680 3.327473 5.322193 14.928825 12.850130 10.389200
[[28]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.150548 49.474756 24.001666 8.216806 7.501863 9.848028 6.186759 11.005536 6.756204 7.258044 10.065425
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.494850 16.739703 14.092987 10.122902 8.763307 12.811221 6.359288 3.814774 4.124513 12.121250 7.384263
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.215327 9.084736 10.100205 4.807077 3.271022 5.035540 14.694371 12.937844 10.439524
[[29]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.435091 49.999261 24.131416 7.951330 7.422963 9.608328 6.330529 12.524974 6.761195 7.292193 9.543594
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.285271 14.734690 14.291857 9.978717 8.243750 12.163007 6.518557 3.805766 4.763516 12.621130 7.116480
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.357244 9.084852 10.174646 4.388983 3.465550 5.039099 15.565245 13.266490 10.339338
[[30]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.855806 50.354566 24.029640 8.892138 7.073495 9.525889 6.069679 11.391020 6.868967 7.563714 10.816538
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.923044 16.341215 14.463965 10.090857 8.699470 12.054216 6.027457 3.977422 4.664624 12.782712 6.182060
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.079849 8.799592 9.940778 4.342795 3.401134 5.412663 15.749447 13.091499 9.951115
[[31]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.082648 50.560782 23.601162 8.269678 7.422184 9.579221 6.060742 13.143405 6.680554 7.506390 11.026001
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.935571 14.677284 14.259373 10.567129 8.550396 12.128375 6.253037 3.572938 5.229183 13.010008 6.315605
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.167688 9.113657 9.737355 4.033459 3.588644 5.399107 15.230819 12.805278 9.979962
[[32]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.388926 50.390910 23.913314 8.886376 7.491040 9.692085 5.908283 12.890875 6.275637 7.538002 10.993426
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.908465 15.166134 14.306572 10.092976 8.650572 11.984398 6.310289 3.881759 4.916478 12.474934 6.520090
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.161314 9.423776 9.685065 3.925779 3.309005 5.570594 14.884130 12.962520 9.957990
[[33]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.287412 50.362217 23.456987 9.039475 7.270283 10.016961 6.212313 13.099625 6.573589 7.310257 10.936733
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.195570 15.234065 14.192164 10.105021 8.125588 11.569253 6.220227 4.132831 5.099746 11.978529 6.489202
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.177989 10.299658 9.940892 3.913458 3.399176 5.677118 15.239133 13.341180 9.779684
[[34]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.175518 49.793868 24.063756 9.227631 8.278602 9.553615 6.132381 13.073077 6.255581 7.359769 12.076606
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.295430 14.071497 14.286892 10.287527 8.422845 11.863188 6.106974 4.040589 5.125169 12.172507 6.650030
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.368337 9.885665 9.373676 4.055029 3.481170 5.175642 15.028243 13.187134 9.760962
[[35]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.361897 49.779043 23.848305 9.801277 8.036064 9.749805 6.102289 12.990699 6.262224 7.411310 12.098547
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.281618 15.713423 14.200208 10.489122 7.900953 11.802637 6.378454 3.926077 4.622671 11.942590 6.409004
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.256037 10.278280 9.018279 4.407189 3.618780 5.324090 14.942586 12.229736 9.950156
[[36]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.204168 50.358294 23.847461 9.790479 8.258338 9.886550 6.020225 13.045474 6.321250 7.626388 12.087525
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.927472 17.386873 14.284435 10.247332 8.934467 11.779192 5.577549 3.756417 3.976839 12.058954 6.573647
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.989501 10.183806 8.709646 4.399002 3.743981 5.430867 13.383635 12.156283 9.906193
[[37]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.821004 50.385811 23.728947 9.163528 8.170689 9.808350 6.052136 13.195774 6.790525 7.641733 11.084163
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.150952 18.639984 14.392336 10.167880 8.725374 12.340857 5.710853 3.648152 4.113238 11.999031 6.005711
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.061453 10.040681 8.996788 4.357895 3.586934 5.439185 13.424798 12.578965 9.832734
[[38]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.893592 50.799837 23.387293 9.234039 8.510771 8.973008 5.998802 13.072193 6.578826 7.365247 11.030362
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.282564 18.546034 14.239413 9.967075 8.580023 12.556790 5.472010 3.626237 4.425414 12.072116 5.978194
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.072892 10.082137 9.987303 4.131450 3.596293 5.515839 13.789271 12.451241 9.942939
[[39]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.487653 50.615074 23.560881 10.594245 8.383551 9.213820 5.949340 13.165627 5.450053 7.472081 11.285165
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.077435 18.357218 14.392520 9.894499 8.293048 11.998888 5.432030 3.496899 4.009161 12.380751 6.075469
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.130963 10.330874 10.023856 4.242017 3.582082 5.379005 13.615852 12.746560 9.581802
[[40]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.098674 50.671515 23.059112 8.929294 7.946954 9.160587 6.049535 11.316725 6.258134 7.301314 11.575564
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.673388 18.441304 14.155790 9.905949 8.103341 14.933581 5.440900 3.650694 4.579424 12.647241 6.193285
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.138817 10.564843 10.127041 4.211182 3.462504 5.565355 13.783255 12.963607 8.460472
[[41]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.448269 51.321381 22.982571 9.293464 8.158605 7.835009 6.102618 11.264172 6.087248 7.433714 11.503443
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.516646 17.743141 14.130499 9.956609 9.242422 15.044506 5.343270 3.851678 4.896483 12.507094 6.254650
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.198192 10.380654 10.225835 4.063050 3.468834 5.635819 13.697615 12.443108 8.903282
[[42]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.170609 51.188588 23.221503 9.249263 7.860754 6.581824 6.023392 13.408140 6.053094 7.324200 12.038135
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.471965 17.969109 14.205014 9.817408 9.550396 13.321399 5.327157 4.270109 4.684864 12.277810 6.323302
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.047798 10.456854 10.098843 5.365735 3.344793 5.629176 13.130237 12.863628 8.720484
[[43]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.949330 51.037546 23.247131 9.047173 7.710933 6.708797 5.941690 13.520466 5.952911 9.016677 11.131198
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.169385 17.288226 14.634266 9.926641 9.537575 13.468051 5.115949 3.967068 4.522985 14.068526 6.539035
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.134840 10.383819 10.105246 4.904826 3.140667 5.746937 14.046291 12.289232 8.783542
[[44]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.033539 50.949256 23.272308 8.854327 9.273362 6.690977 5.647816 11.011290 6.087407 6.629720 11.971845
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.639330 17.395334 14.552332 10.136290 9.260630 15.063371 6.135609 4.201491 4.631832 14.560249 6.656907
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.190890 10.703223 10.195187 5.157931 3.620460 5.777946 13.355292 11.784658 8.905537
[[45]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.578783 50.641317 23.546075 10.574952 8.726093 6.320632 5.514950 11.489278 5.526863 6.335285 12.166087
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.867876 17.041875 14.121558 10.479353 9.543998 14.537601 6.248237 4.058603 4.739709 14.194662 6.590088
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.269340 11.229091 10.075741 5.158777 3.317798 5.585158 13.273904 11.676313 9.306808
[[46]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.606351 50.999231 22.921581 10.736459 8.971009 6.539297 5.798973 11.536958 5.622988 6.226242 12.053649
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.065416 16.906611 13.869632 10.101989 9.286890 14.889757 5.204123 3.731307 4.491729 14.952335 6.446646
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.360904 11.417339 9.965670 5.168728 3.422599 5.815192 13.123418 11.635465 9.270616
[[47]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.695405 51.588164 22.802439 10.531110 8.737955 7.679545 5.792434 13.305960 5.518070 5.960761 12.136186
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.888330 17.152617 13.856425 10.355999 9.021746 12.808893 5.392516 3.738005 4.536334 14.703713 6.623033
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.399921 10.757044 10.251646 4.409770 3.429249 5.571578 13.134345 11.605192 9.856612
[[48]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.799925 51.680432 22.664260 8.672355 9.004465 6.394490 5.455895 13.720270 5.776398 5.869011 11.632360
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.898013 17.059876 14.396581 10.092049 9.364796 12.925109 7.396563 3.851187 4.393257 14.853695 6.061318
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.360220 10.493985 9.878879 5.689942 3.270555 5.769627 13.896826 11.849492 9.382566
[[49]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.993627 51.991468 23.054027 8.650805 8.775592 6.437021 5.279561 13.719434 5.855440 6.029012 11.692496
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.375404 17.285408 14.508908 10.300890 9.086622 13.196636 7.229987 3.701444 4.621260 14.922430 6.249937
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.445890 9.995709 10.298517 5.435911 3.112751 5.729340 14.558086 11.858440 9.312299
[[50]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.866942 51.757781 23.188518 8.676254 8.594034 7.785357 5.190434 13.993014 6.145027 6.232700 11.550663
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.697747 17.017245 14.479782 9.886144 8.876433 13.053299 7.456086 3.559735 4.870634 14.900821 6.278660
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.877768 10.387156 10.338902 4.643404 3.443102 5.353063 14.410586 11.423390 9.678452
[[51]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.702734 51.188063 22.864776 8.810603 8.424139 6.456518 5.057509 14.018095 5.760771 6.589414 11.546334
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.832463 17.180831 14.815096 10.227747 9.279682 13.034222 8.959695 3.595059 4.640318 14.960316 6.256723
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.845683 10.413075 9.914276 5.425216 3.334655 5.705382 14.640597 11.306545 9.687374
[[52]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.598788 51.311565 23.267298 8.976161 8.424715 6.459455 5.154311 13.359006 5.797428 7.868284 10.324929
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.715858 16.735483 14.697306 10.606920 9.882977 13.289774 8.855158 3.631342 4.866955 14.938868 6.036262
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.751104 10.257908 9.882891 5.314299 3.171295 5.576397 14.617615 11.294573 9.404591
[[53]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.603194 51.131326 22.805436 8.936735 8.319818 6.865171 4.862041 13.232854 5.957809 6.302588 11.493466
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.821182 17.107667 14.563367 10.588873 9.886113 13.233956 8.767365 3.432581 4.964746 15.894080 6.317416
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.887928 9.967220 9.973623 5.371293 3.200091 5.795332 14.814118 11.428088 9.604897
[[54]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.124976 50.611500 23.231548 8.183892 8.113997 6.635694 4.898715 13.306489 5.744503 6.430918 11.586843
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.696690 17.018807 14.656496 10.364776 9.392299 13.431974 8.900145 3.280815 4.985790 16.322771 6.262536
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.864799 9.630592 10.371015 5.460717 3.314000 6.189170 14.607798 11.847366 9.421313
[[55]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.304200 50.627032 22.153504 8.264128 8.288033 7.593446 5.089755 13.140021 5.642922 8.322697 10.292415
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.940654 16.075787 14.504561 10.327549 9.388863 13.600077 8.749319 3.337935 5.023729 15.915099 5.974903
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.701654 9.580434 9.643142 5.421573 3.243977 6.179389 16.312118 12.025665 9.541783
[[56]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.349398 50.425165 22.208922 8.131609 8.384243 7.641445 4.996890 13.658707 5.601466 8.285304 9.824256
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.144969 16.185007 14.427811 9.968007 9.348038 13.676269 8.573613 3.327625 5.003867 15.499249 5.969522
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.145944 9.708659 9.734885 5.453783 3.218881 5.982252 16.783524 11.865138 9.765336
[[57]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.650530 50.005954 20.942637 8.853816 8.437657 7.409290 5.068358 13.457556 5.606395 8.099658 9.775804
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.638490 16.049346 14.933253 10.392251 9.635117 13.678367 8.455156 3.526105 5.016167 15.648332 6.328258
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.221534 9.727597 9.503393 5.529186 3.264023 6.072348 16.589297 11.903798 9.934752
[[58]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.917281 49.906088 21.176200 9.255586 8.285378 7.983044 4.956428 13.615128 5.534098 8.365849 10.026478
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.487872 15.829228 14.424076 10.350814 9.904370 13.574673 8.891281 3.628904 5.035554 15.810173 6.345380
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.012039 10.148027 9.325317 5.251067 3.086151 5.618641 17.018132 11.467571 10.096287
[[59]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.900477 50.087820 20.857836 9.006443 8.401787 7.849501 4.620697 13.397201 5.530094 8.124491 10.201797
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.621823 15.995941 14.487381 10.578616 10.488494 13.305389 8.724251 3.638456 5.064911 15.594067 6.092448
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.095612 10.091352 9.592744 5.198837 3.013524 5.808071 17.177482 11.530714 9.800708
[[60]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.899795 50.316950 21.651585 8.970433 8.287490 7.462824 4.847129 13.199899 5.708987 8.255398 8.702151
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.176108 15.869717 14.826493 10.067444 9.984249 13.409975 8.956611 3.838392 5.147172 16.080746 5.975190
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.846952 10.147601 9.799081 5.266912 3.272196 5.519884 17.728154 11.556621 9.324034
[[61]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.814492 50.368736 21.491562 9.027239 8.186675 7.284583 4.780164 13.471525 5.698149 8.231343 8.371394
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.816049 15.736621 14.883787 10.267570 10.026046 13.773050 8.670308 3.803360 5.105982 16.135927 5.994462
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.075719 10.248565 9.770183 5.357304 3.414109 5.641750 17.603750 11.535386 9.466546
[[62]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.193813 50.342827 21.541390 8.863504 8.214737 7.227701 4.815211 13.162540 5.498404 8.395834 8.865056
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.831957 15.287215 15.267422 10.257448 9.507167 12.593112 8.474513 3.898072 5.225934 16.284804 6.059183
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.219258 9.523869 9.950493 5.377439 3.226944 5.290137 18.189454 11.708749 10.926877
[[63]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.524274 51.158444 20.942456 8.888884 8.302199 8.390503 4.952865 13.532383 5.343781 7.965778 8.526994
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.797455 15.121874 14.091960 10.321291 9.546650 13.839624 8.174713 3.703633 5.114152 16.644785 6.188053
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.016314 10.219348 9.802539 5.504506 3.196661 5.817993 17.496973 11.476287 9.450867
[[64]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.667889 50.950922 21.437880 9.270689 8.862371 8.737324 5.028123 13.471317 5.775424 8.021103 10.158667
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.431297 13.872305 14.101868 10.167334 9.612999 13.367380 8.202229 3.633968 4.905776 16.015101 6.203310
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.828655 10.344141 9.336655 5.249005 3.395312 4.932882 17.531717 11.924209 9.582052
[[65]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.545430 50.463233 21.701136 9.448483 8.297285 8.619364 5.267057 13.386645 5.815030 8.016359 9.885724
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.605370 13.763026 13.992876 10.121474 9.480643 12.308892 8.202598 3.853811 4.956449 16.434690 6.375690
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.809930 10.019449 9.776919 5.364016 3.304818 5.086848 17.483106 11.847201 11.099981
[[66]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.989596 50.591081 21.121344 9.671621 8.283137 8.676031 5.285342 11.244131 5.066530 8.130203 8.802986
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.779871 15.376737 13.546584 10.241994 10.343991 14.557112 8.464867 3.642423 5.071567 15.888143 6.178998
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.771119 9.495344 9.424523 5.528759 3.453299 4.837845 18.228952 11.945102 11.085019
[[67]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.068863 50.324540 21.387303 9.715928 9.548137 7.516598 5.162353 11.438046 5.191485 8.335629 9.216941
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.553775 15.275962 13.187566 10.271738 10.056687 14.598373 8.414306 3.619427 5.287614 15.884506 6.312620
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.787280 9.432128 9.249319 5.393179 3.210995 5.015543 18.354434 11.611299 11.052678
[[68]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.147231 50.348815 22.752020 9.692037 9.668520 7.621507 5.210226 11.469302 5.135675 7.763151 9.078309
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.713343 15.520160 13.137526 10.133440 10.376795 14.182018 8.288598 3.802912 5.071165 16.181886 6.411678
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.036931 9.648730 9.407338 5.598268 2.895239 5.067840 16.798946 11.291327 11.124876
[[69]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.088446 50.783978 22.806595 9.322455 9.586705 8.767260 5.224075 11.055998 4.943872 7.896194 9.567203
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.791786 15.366026 13.351508 10.549621 10.066641 13.888877 6.748320 3.738391 5.290881 16.388119 6.209031
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.161976 9.620893 9.795918 4.606015 2.965428 4.709154 16.848895 11.529296 11.255494
[[70]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.527108 51.236115 23.191375 9.134414 8.214150 9.304520 5.273972 12.549277 5.084061 7.543941 9.111088
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.762032 15.325605 12.243862 9.881811 10.719337 14.212924 7.314081 3.568815 5.214739 16.487683 6.177808
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.126079 10.677601 9.751559 4.490573 3.025758 4.933145 17.085452 11.499698 11.367460
[[71]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.416661 50.675387 22.685263 9.339839 9.657612 8.584299 5.182002 11.305467 5.241145 8.023588 9.232007
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.117615 15.544263 11.915228 10.461243 10.243566 14.223353 7.118933 3.557539 5.362849 16.356432 6.457773
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.004529 10.949743 10.078138 4.340356 3.176762 4.708706 16.288527 11.793846 11.063996
[[72]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.940090 50.903270 22.744502 9.267535 8.942387 8.775162 4.840077 11.113695 5.100652 8.147703 9.130534
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.922098 16.191837 12.190383 10.611630 10.320081 14.675051 6.905129 3.368047 5.338016 15.965071 6.581389
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.787063 10.494478 10.733449 4.354262 3.129277 4.814737 16.521398 11.718147 11.358528
[[73]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.327896 50.425119 22.593702 9.462002 9.252719 8.590034 5.007312 11.383737 5.321164 8.256887 9.183220
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.617858 16.251234 12.325492 10.555664 10.065771 14.127757 6.935579 3.556722 5.467330 16.363263 6.946355
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.655050 9.472702 11.114606 4.191499 3.030711 4.529291 16.598181 11.569977 11.065075
[[74]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.588995 50.847464 20.833481 9.239123 7.868859 8.408813 5.214016 12.930529 5.281425 8.111857 9.221310
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.530246 16.165845 12.110085 11.282208 10.088082 14.286618 7.195668 3.210283 5.438732 16.209252 6.344772
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.906803 9.357313 10.907632 4.468162 3.105390 4.503823 17.056680 11.723557 11.252828
[[75]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.458601 50.713618 21.028264 9.715131 7.828849 8.525799 5.125976 12.518326 6.231043 7.598164 9.147290
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.475423 15.661062 11.653457 10.282544 10.291469 14.224964 7.160002 3.331601 5.732532 16.272478 6.252169
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.000118 9.047154 10.889083 4.382069 3.326811 4.670691 17.351546 11.890461 11.126608
[[76]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.481369 50.539871 21.248308 10.128178 8.053804 8.364352 4.990864 14.158516 6.314846 7.717560 9.252831
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.824759 15.548736 11.572650 10.227540 9.797957 12.372323 7.117418 3.220968 5.283604 16.408559 6.322321
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.968559 9.538499 10.922110 4.465707 3.238833 4.572208 17.176851 11.934383 10.985649
[[77]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.991315 50.406582 22.653031 10.398490 8.386461 8.515633 4.986696 14.784341 6.398585 7.739414 9.315684
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.909759 15.940065 11.749513 9.765144 10.011359 11.843833 7.049609 3.263508 5.076661 16.638339 6.301574
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.954280 8.976248 10.833609 4.350654 3.185865 4.858175 16.647469 11.955722 11.083959
[[78]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.551583 50.960325 22.606250 10.621919 7.938994 8.939120 5.324145 14.960184 6.372647 7.422673 8.734074
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.912031 15.410765 11.897563 9.117509 9.733953 11.805791 6.931826 3.791807 5.304948 16.240104 6.010204
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.730181 9.588002 10.538062 4.251189 3.338420 4.823088 17.047967 11.838779 11.406818
[[79]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.466508 50.432281 22.683402 10.535607 8.336250 8.564995 5.414458 15.008505 6.488591 7.694573 8.832419
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.823027 15.389465 12.230805 9.210252 10.246479 11.643210 7.125730 3.344350 5.333383 16.509600 6.118260
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.781391 9.368560 10.622954 4.033893 3.028397 4.892944 17.108195 12.059737 10.942414
[[80]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.653647 50.497113 22.976378 9.671801 8.253790 8.690120 5.259302 14.539215 6.434692 7.729619 8.596142
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.899511 14.262039 11.916320 9.526702 10.199337 11.523421 9.454624 3.545547 5.274910 16.720999 5.877504
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.529809 9.198243 9.169261 4.048758 3.241987 4.792365 17.086424 13.401343 11.303108
[[81]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.381343 50.584648 22.547663 10.362948 8.587740 8.719976 5.351103 14.680812 6.170660 7.476730 8.418116
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.707818 15.285210 11.971898 9.255926 9.709168 12.941530 9.559916 3.642217 5.205900 16.512630 5.845657
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.876147 9.383404 8.600227 4.270757 3.167476 5.139218 16.879777 13.344574 9.926799
[[82]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.368985 50.012204 22.740585 10.220591 8.347074 8.551276 5.326062 14.479369 5.962956 7.538996 8.632172
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.375630 14.837931 10.362367 9.059957 10.160397 13.195283 11.011899 3.739521 5.110755 16.633407 6.341754
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.837729 9.063953 8.008918 4.631601 3.268661 4.971410 17.301641 13.524074 9.841342
[[83]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.822942 50.731368 22.902533 10.153693 8.478202 8.581789 5.268242 14.463140 6.229741 7.459457 9.131228
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.493062 14.524202 10.042274 9.430641 10.081788 12.816950 10.644522 3.524867 4.861373 16.648542 6.447698
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.946727 9.524364 8.006572 4.450049 3.436352 4.645559 17.248218 13.547575 9.944078
[[84]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.714287 50.136624 22.645155 10.519764 8.058021 8.299885 5.355292 14.830023 6.354522 9.631750 9.304165
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.590960 14.556155 10.617151 9.220195 10.285803 12.087854 10.747304 3.401256 5.338742 16.484542 6.053652
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.925948 9.193424 6.192905 4.623904 3.197885 4.760114 17.086813 12.918414 11.529297
[[85]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.001654 49.989191 22.446775 10.510820 6.744823 8.388778 5.032795 15.364251 6.452039 10.817129 9.237101
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.362640 14.982464 11.565273 9.398289 10.346526 12.142391 9.387437 3.472130 4.951629 16.530002 6.069141
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.929250 9.266642 6.012752 4.724201 3.379208 5.052379 16.875986 12.890219 11.506377
[[86]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.323949 50.375710 22.094738 10.754446 7.132497 8.262268 5.045656 15.020485 6.303482 10.877233 9.416090
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.984589 15.372376 11.956027 9.659242 10.327955 12.108412 9.170999 3.013143 4.860200 16.407574 6.182945
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.393797 8.860601 5.897437 4.702647 3.168573 4.693888 16.477494 13.666566 11.557931
[[87]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.149898 50.393151 22.279626 10.671330 8.946854 8.348260 5.054838 15.033826 5.631030 9.851993 9.059355
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.995059 16.205856 11.591179 9.313493 9.577296 13.231862 9.242286 3.190832 4.473758 17.076806 6.139614
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.290550 8.993163 5.750947 4.802128 3.289989 4.604456 16.825543 12.428590 11.662775
[[88]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.722360 50.265434 22.746555 10.519210 8.715472 8.197695 4.845340 16.328295 5.213122 10.074683 9.387414
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.942135 16.462315 11.760193 9.237387 10.006755 13.089918 9.047419 3.063435 4.742923 16.705863 6.164875
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.332052 8.763575 5.881133 4.877558 3.289775 4.639367 16.291228 12.327989 11.589501
[[89]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.522261 50.573053 22.741040 10.597396 8.772809 8.355038 4.459481 15.340817 5.590048 9.870639 9.082032
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.456943 15.993580 11.629870 9.664340 9.346175 13.122147 9.101812 3.238013 4.494340 17.385330 6.134164
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.216907 8.555016 6.085939 4.919224 3.228491 4.557301 16.215157 12.454301 11.586379
[[90]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.701577 50.560710 22.130697 10.769146 7.603312 8.357047 4.760005 15.182858 5.745356 11.299011 8.789369
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.646070 14.728858 11.722539 9.744179 9.878723 12.605426 9.040710 3.173276 4.815009 17.621957 6.073456
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.887481 8.665518 6.151136 4.760763 2.966810 5.048213 15.687849 13.780858 11.545415
[[91]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.395975 50.052063 21.705317 11.744434 8.822027 9.007102 4.624205 15.339978 5.927198 10.154944 8.357401
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.692755 16.113325 12.099008 8.510575 10.243906 12.799042 8.869497 3.211033 4.725389 17.571243 6.003324
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.774264 8.655549 5.865248 4.821188 3.025039 4.998976 15.571931 12.333837 11.291824
[[92]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.178279 50.453299 21.602609 11.725578 8.858307 8.860849 4.775584 15.441750 5.611006 10.070008 8.348898
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.544505 15.112636 12.090070 8.812121 10.494617 12.812041 9.080988 3.205757 5.105519 17.412915 5.875165
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.918035 8.635456 5.879385 4.735943 2.993801 4.809620 15.647198 13.611964 10.739022
[[93]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.854095 50.509896 21.994564 11.451127 8.653153 8.773193 4.791024 17.842417 5.797023 9.964196 8.653089
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.098312 14.320895 11.966582 8.962825 10.441015 12.844923 8.935524 3.536786 5.156836 17.382293 5.988974
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.978277 8.340393 5.753004 4.549441 3.053909 4.779982 15.283987 14.248477 10.862296
[[94]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.078711 50.250343 22.197962 11.071384 8.601764 8.711428 4.938410 17.464050 5.640422 9.865749 8.893903
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.729961 14.331750 12.137312 8.643271 10.254410 14.515978 8.906389 3.610460 4.696686 17.681604 6.237326
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.281274 8.658848 6.079946 4.772331 3.320263 4.374917 15.114786 14.019040 9.610124
[[95]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.979071 49.922582 22.016303 11.131146 8.664086 8.913867 4.838562 17.654109 5.699592 10.078684 9.409448
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.043896 14.614677 12.254702 8.294617 10.665340 14.542707 8.916065 3.365788 4.877959 17.248968 6.184052
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.358780 8.661023 5.637281 4.676643 3.062772 4.500914 15.135847 14.218674 9.280194
[[96]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.406772 49.618538 22.261322 11.686489 7.491494 9.004003 4.948869 17.630904 7.092494 10.926860 9.175224
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.132500 14.941631 12.034346 8.316469 10.789912 14.056372 8.902495 3.354595 4.914733 17.171055 5.974263
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.263659 8.360230 5.950830 5.037831 2.900710 4.304675 15.564010 13.323418 9.371542
[[97]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.791863 49.801133 21.991538 11.270603 8.024300 9.005081 4.830160 17.166514 6.023470 10.786013 8.815176
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.272209 14.751367 12.122463 8.118531 10.479834 13.995061 9.067053 3.414474 5.446631 17.733585 6.112310
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.835733 8.357692 5.982912 5.095926 3.086173 4.439618 15.583349 14.320577 8.971058
[[98]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.372375 49.830198 22.108998 11.191199 7.690056 9.096825 4.505699 17.986434 7.149465 10.903305 8.747373
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.365385 15.845858 12.034851 7.821269 10.959281 12.197087 9.184789 3.365287 4.665546 17.817387 6.112828
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.108470 8.269567 5.949812 4.843211 3.052831 4.651287 15.481955 12.833956 10.372310
[[99]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.777576 49.526354 22.538278 11.605844 7.404962 9.069239 4.749975 17.847552 7.240361 11.074672 8.653829
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.225492 16.305948 11.972707 8.419463 10.435399 11.833942 8.850873 3.465989 4.478360 17.746118 6.072234
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.000131 8.850212 5.621928 5.206294 2.983798 4.705950 15.461054 13.073886 10.381921
[[100]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.934627 50.010441 22.420145 11.367442 7.299033 8.869633 5.014806 18.056718 7.488278 11.004100 8.750748
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.072876 15.750860 11.880207 8.063044 10.332453 13.691275 8.891831 3.316741 4.978203 17.908232 5.970856
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.176890 8.741851 5.514624 5.021433 2.945411 4.731496 15.417299 13.057898 8.872279
[[101]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.755823 49.536734 22.248685 11.353831 7.490384 9.011124 4.678578 18.188316 7.422297 10.943167 8.417980
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.299961 15.882280 11.611699 7.743634 10.505256 13.521613 6.966025 3.388638 4.650532 17.853994 5.920602
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.615303 8.884008 5.923688 4.934041 2.923240 4.594141 15.950313 13.147757 9.307568
[[102]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.201068 49.920580 22.162502 11.497546 7.486861 8.400684 4.770559 18.281784 7.240360 10.850812 8.742315
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.249423 15.702980 12.026326 7.784497 10.569609 13.448425 7.333809 3.530119 4.941391 18.227390 5.814265
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.369652 8.419264 5.947394 4.854918 2.932235 4.732038 15.931366 13.014657 9.279679
[[103]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.155231 50.206861 21.966292 11.153722 8.412412 7.188929 4.956589 17.431082 6.993690 10.846833 8.909685
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.189863 15.994324 13.260232 8.019093 10.573472 13.390908 7.145270 3.587793 5.023589 17.566982 6.173170
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.590184 8.460319 6.070910 4.720522 2.974705 4.567969 16.037522 13.222588 9.158620
[[104]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.435478 50.204260 21.989227 11.244465 8.813146 8.698931 4.954036 17.541163 7.487085 10.668347 8.587316
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.922191 15.920943 11.829922 8.032040 12.003012 14.162417 6.988366 3.641731 5.026870 17.799260 5.955240
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.546860 8.135537 6.447038 4.957170 2.677652 4.489067 15.836800 11.958827 9.289112
[[105]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.751027 49.890644 21.990126 10.939713 8.592255 7.345261 5.061688 17.628114 7.758979 11.069938 8.125548
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.097104 15.309352 13.039669 8.236238 12.000445 14.197324 7.133164 3.546724 5.103504 18.526877 5.814003
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.552870 8.052826 6.369854 4.781090 2.931182 4.355938 16.070595 11.815059 9.075093
[[106]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.899787 49.480513 22.241809 11.596699 8.758559 8.584066 5.346357 18.655881 7.777210 11.268374 8.162215
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.735978 15.683141 11.730098 8.211987 11.899478 13.662326 7.403808 3.462219 4.640317 18.232226 5.762462
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.541499 6.781808 6.518800 5.006975 3.023616 4.195489 15.780754 11.919231 9.126456
[[107]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.972849 50.329063 20.817331 10.665039 8.614098 8.859935 5.097316 18.203134 7.755435 11.445077 8.531909
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.201121 15.920916 11.462834 9.023954 11.810955 13.369815 6.866424 3.463320 4.658624 18.044024 6.117938
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.395491 6.411832 6.597311 5.050935 3.036015 4.264521 15.749046 11.616624 9.035049
[[108]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.058538 50.245893 21.087896 10.371184 8.497670 8.745238 5.288465 18.335408 7.740597 11.411798 8.352787
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.125190 16.115278 11.679398 9.254503 11.896067 13.350144 6.854178 3.475367 4.726440 17.904950 6.050626
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.437583 6.500737 6.352377 4.916354 3.115302 4.252934 15.700935 11.700020 9.058885
[[109]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.028832 50.125387 21.214622 10.563617 8.618980 8.765454 5.135299 18.604308 7.268258 11.368765 8.026810
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.816561 16.301113 11.375739 8.988800 11.780233 13.469233 6.842036 3.666023 4.501394 18.422108 6.087219
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.285744 6.255370 6.593238 4.885274 3.131070 4.542160 16.246626 11.672004 9.187588
[[110]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.985421 50.143828 21.119227 11.749239 8.668978 8.769425 4.994975 18.376290 7.864997 11.097765 8.143144
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.412446 15.801832 11.582705 7.864835 11.642404 13.892763 6.921003 3.632940 4.742508 18.069706 5.962683
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.283109 6.678057 6.464958 4.477171 3.129416 4.292982 16.097201 12.150487 9.119046
[[111]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.138269 50.462977 20.880852 11.452462 8.706963 8.967845 5.026435 18.753953 7.504468 11.133651 8.512017
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.240385 16.524317 11.527312 8.013089 11.875068 13.628127 6.681242 3.496468 4.408293 17.970406 5.831208
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.157539 6.591172 6.593454 4.802379 3.084943 4.192201 16.092808 12.237764 8.942015
[[112]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.932005 50.507237 20.676668 11.038506 7.632443 7.464637 4.975122 22.161268 7.483816 11.144399 8.570469
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.204829 16.595823 12.525224 8.256378 11.644059 13.220154 6.993972 3.759243 4.506671 16.675642 6.096969
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.454629 6.591351 6.498512 4.723572 2.889028 4.264275 16.626871 11.910341 8.824090
[[113]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.992532 50.607517 20.951586 11.334286 7.975894 7.447255 5.129598 22.643380 7.406030 11.033300 8.923858
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.347646 16.516958 12.846377 8.001858 11.519611 12.870281 7.286233 3.652191 4.706878 16.588007 5.707925
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.273251 6.575612 6.403144 4.572050 2.600679 4.162926 16.032630 11.989121 9.159799
[[114]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.393504 50.473363 21.165195 11.044105 6.977144 7.687701 6.457179 23.119847 7.674535 11.553384 8.379817
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.500603 16.767892 12.827450 7.580823 11.582769 14.075304 7.228069 3.530019 4.583997 16.177687 5.820439
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.305483 6.541230 7.075826 4.490504 3.000995 4.355306 14.560574 11.898228 8.536836
[[115]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.392457 50.095604 21.192857 12.778643 8.630475 7.375326 6.058810 19.247868 7.872351 13.072526 7.999502
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.321173 16.938525 12.735184 7.551241 11.637376 13.597905 6.946314 3.586073 4.527154 16.838270 6.460578
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.414096 7.056282 7.229449 4.720332 3.038711 4.470065 14.751579 11.969436 7.207107
[[116]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.352168 50.355320 20.846030 12.646453 9.137530 7.440830 5.324656 20.227187 7.651154 11.921232 7.985299
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.016741 16.810121 12.994614 7.648187 11.978889 13.674058 6.820325 3.504171 4.851079 16.729546 6.072659
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.264300 6.743886 7.258092 4.542738 3.018749 4.229742 15.586849 12.028292 7.514603
[[117]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.314166 50.775185 20.650486 13.076524 9.428764 5.903563 5.123221 19.821232 6.483426 11.478459 8.108773
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.343617 17.000790 12.773925 7.629557 12.188566 14.710198 6.960446 3.562268 4.634698 14.590167 5.865337
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.501589 6.968309 9.390748 4.575573 2.768399 4.473971 15.880257 11.675890 7.598215
[[118]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.714486 50.735061 20.636179 12.771215 9.628362 6.164391 5.996438 19.794247 6.388719 11.569799 8.200730
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.593003 16.946972 13.120369 7.505147 11.903469 14.770260 7.500516 3.539139 4.926467 15.061923 5.813528
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.028927 7.054464 9.332780 4.920013 2.777588 4.374684 14.388019 11.696370 7.415600
[[119]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.117450 50.987424 20.644576 12.939603 9.654324 6.144104 5.939923 18.106575 6.110751 11.617655 7.970901
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.361369 17.436478 13.418539 7.425413 12.340599 14.410712 7.082484 3.433137 4.813091 17.078660 5.731715
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.333254 7.111324 9.619875 4.890396 2.849910 3.968025 14.458597 11.089058 7.506199
[[120]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.803346 50.819538 21.010848 12.923250 9.615795 5.848703 6.157205 19.616797 6.735215 11.724390 9.407030
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.599607 17.583093 13.015311 7.401963 12.319232 14.086246 7.217785 3.355064 4.638142 15.333367 5.970234
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.443274 7.250317 9.598930 4.550194 2.928880 3.808127 13.306617 11.103862 7.529434
[[121]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.639443 50.907904 21.042301 13.141503 9.391204 6.084952 6.177048 19.305495 6.642607 11.723588 8.186179
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.833401 17.150411 12.813699 7.521456 12.197746 14.784930 6.972614 3.288974 4.748001 15.421900 5.574096
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.427754 7.002207 9.463523 4.496421 2.870891 4.137403 15.160471 11.118763 7.637326
[[122]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.069546 51.152176 20.598892 13.052973 7.719450 6.155224 6.035898 20.716513 6.479936 11.823893 8.278102
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.890499 16.794436 12.938526 7.547864 12.299553 14.685119 7.040501 3.389880 4.974683 15.426040 5.567675
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.261459 6.848537 9.805650 4.347240 2.957196 4.085399 15.455983 11.582628 7.366421
[[123]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.843398 51.003144 20.750560 12.991194 7.695041 5.856044 5.457245 20.873425 6.249649 12.198623 9.798635
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.330972 17.357355 13.403220 7.331441 12.664699 13.692976 7.153823 3.307591 4.925257 15.381777 5.461041
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.107741 6.985792 9.661272 4.588109 2.905792 4.022525 14.045636 11.639525 8.863429
[[124]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.500560 51.592088 20.551872 12.704798 7.499434 6.184232 5.428993 22.009126 6.695733 9.831841 9.225225
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.624618 17.843699 13.335089 7.107200 12.066094 13.742328 6.932764 3.493373 4.523066 15.767230 5.512174
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.107807 7.172918 9.615260 4.760566 2.846125 4.046648 13.308282 12.340806 9.094799
[[125]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.344567 50.740514 20.877204 13.124810 7.655382 6.006929 5.328753 22.406013 6.711418 10.900577 10.006983
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.261948 16.341299 13.128327 7.187352 12.421784 14.126377 7.127971 3.206881 4.603334 15.617291 5.635160
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.137544 7.117958 9.454350 4.588985 2.898328 4.211353 13.394075 11.688626 9.182981
[[126]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.145357 51.158713 20.960374 11.972746 8.109744 6.238108 5.219473 21.357100 6.549121 12.457107 9.867020
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.793852 17.030828 12.833830 7.231189 13.075104 14.304135 6.716499 3.435631 4.380883 15.456400 5.610004
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.880212 6.766413 9.553523 4.545528 3.195779 4.200483 13.492456 11.912892 8.861576
[[127]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.434960 51.033318 21.083225 11.660756 8.013411 6.080523 5.451964 23.258856 6.424719 11.102336 9.791851
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.788095 16.953372 12.985891 7.276789 12.887367 14.410913 6.994801 3.455026 4.490267 15.152579 5.779833
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.876908 6.725320 9.389889 4.502781 3.067875 4.324316 13.399543 11.617952 8.894948
[[128]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.502313 50.630078 20.935645 12.607845 8.276898 5.763314 5.376457 23.014030 6.716140 12.149186 10.257414
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.975217 16.660369 12.717309 7.330879 13.000007 15.848826 7.018318 3.686241 3.989251 15.107942 5.615923
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.794423 7.012343 9.231000 4.364337 3.063596 4.334597 13.318483 10.669674 7.292624
[[129]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.355801 49.633418 21.100091 12.220805 7.985163 6.140173 5.576924 21.291638 6.687133 13.725667 10.414473
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.779111 16.526705 12.764229 7.295255 13.205468 14.804482 6.813994 3.614989 4.476518 16.273643 5.672591
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.899675 7.393971 9.223822 4.231542 2.980230 4.583464 13.126678 10.762517 7.774891
[[130]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.963261 49.659303 20.576214 12.327639 7.986093 6.432854 5.646731 23.459216 6.600419 12.445557 10.241305
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.821786 16.129775 13.146156 7.330792 13.790808 14.737299 6.781435 3.551503 4.524701 16.209946 5.627505
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.985094 7.017157 9.200184 4.392963 3.002535 4.223550 12.836528 10.479739 7.974502
[[131]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.107751 49.809918 20.359946 12.282204 8.097271 6.545225 5.823738 23.593284 6.570257 12.351448 9.877642
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.001395 15.897211 12.849949 7.285158 13.954456 12.824792 6.565794 3.617202 4.764499 16.315017 5.496350
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.992690 7.326153 9.196837 4.529900 2.866809 4.000566 12.873961 10.512330 9.667871
[[132]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.427961 49.755769 20.388339 12.341505 8.042500 6.555616 5.595331 23.388488 6.567646 12.404767 10.002118
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.991270 16.296863 12.695547 7.232606 13.826269 13.095025 6.676027 3.696116 4.516788 16.896828 5.780140
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.048301 6.756093 9.440591 4.562660 2.844839 4.704844 11.495202 10.571649 9.767677
[[133]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.347143 50.013315 20.288457 12.352797 7.936008 6.544133 5.644542 23.452675 6.559550 12.306701 9.738385
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.826947 16.280303 12.537687 7.470262 13.680146 13.062975 6.921934 3.705098 4.542957 16.727025 5.592587
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.085140 7.077710 9.503748 4.457638 2.706439 4.515285 10.971524 10.511342 9.901782
[[134]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.556747 49.984444 20.829150 12.378751 7.498283 6.347205 5.638256 23.066229 8.039692 12.264878 10.337199
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.639226 15.744723 12.298137 7.589693 13.903952 11.538434 6.929319 3.963896 4.391816 16.935229 5.710247
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.312597 7.030496 9.262713 4.454681 2.811759 4.551377 11.307088 10.220945 9.781078
[[135]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.659801 49.572998 20.274377 12.253212 7.693270 6.384268 5.440911 21.467925 7.969032 14.268973 10.109579
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.905433 15.592979 12.122806 7.643330 15.005017 11.632340 6.959739 3.931600 4.583510 16.858916 5.663051
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.979974 7.206192 9.210787 4.561103 2.922159 4.537641 11.549507 10.409546 9.840121
[[136]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.915170 49.808280 20.407908 12.105136 6.700047 6.326232 5.462736 21.358787 7.709261 15.426379 9.670722
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.816763 16.166295 12.138505 7.273705 15.536285 11.321786 6.706219 3.844353 4.883502 16.813469 5.750813
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.834963 6.982260 9.307553 4.626108 3.039072 4.542548 11.294053 10.532049 9.701383
[[137]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.775236 50.354708 20.550375 11.486245 6.746138 6.651585 5.244599 21.310353 8.380690 15.388268 10.158258
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.685917 15.478263 12.584326 7.234981 15.450751 11.431746 6.460637 3.706070 4.858207 16.463217 5.901832
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.025209 6.973944 9.661984 4.980855 2.735159 4.553829 11.434410 10.056695 9.435247
[[138]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.955916 50.491676 20.212805 11.779435 6.453875 5.329548 5.244146 21.434725 8.177191 15.473916 9.783365
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.668669 15.894532 10.855979 7.231457 15.411583 12.424614 6.385957 3.544920 4.976505 16.900875 5.646801
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.180430 6.977962 9.733832 5.039618 2.763362 4.436702 12.129224 9.798089 9.543024
[[139]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.533745 50.658928 20.210412 11.440820 6.607459 5.401340 5.386841 21.140875 7.104889 15.890551 10.010473
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.835272 16.001918 10.602596 7.268722 15.315013 13.858735 6.445105 3.593043 4.782860 16.760718 5.635010
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.846998 6.740036 9.613005 4.921415 2.742375 4.420663 11.830756 10.136293 9.666307
[[140]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.737848 50.920286 19.772699 11.401241 6.842154 5.315748 5.460205 21.791391 7.096279 15.395878 9.429142
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.742841 16.188985 10.596121 7.351057 15.188289 13.469084 6.363619 3.711884 5.062409 16.849128 5.697357
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.920301 6.874197 9.627198 4.748677 2.655315 4.314763 11.702793 10.157202 9.732521
[[141]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.033020 50.885362 20.081614 11.058302 6.335931 5.307212 5.223588 21.616115 7.220888 14.277492 9.797190
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.691732 16.490623 10.632534 6.305814 15.153396 13.213047 6.752570 3.580885 5.182053 17.819077 5.597991
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.062647 6.789859 9.109222 5.146967 2.819177 4.462008 12.015712 11.115225 9.894710
[[142]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.861246 50.678615 20.217674 11.083366 7.016397 5.510950 4.349897 21.871360 6.913408 15.742613 10.248685
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.240873 15.870929 10.820216 6.493853 15.156547 12.889269 6.752243 3.474121 4.967028 17.468499 5.608077
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.243188 6.869843 9.531505 5.032148 3.174303 4.083571 12.107371 9.851952 9.368477
[[143]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.750717 50.513569 19.927779 10.712053 7.155355 5.608032 4.257477 21.793836 7.374636 14.193951 9.839361
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.212689 15.882417 10.596799 6.496904 15.403074 12.652570 6.837889 3.402196 4.854675 17.635737 5.551503
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.459025 7.278847 9.488174 4.990711 2.864056 4.256823 12.349839 11.291813 9.425886
[[144]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.822864 50.640320 20.443502 10.348201 6.929798 5.348248 4.209736 23.452005 7.102749 14.128854 10.058027
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.919493 15.761226 10.644934 6.547976 13.775870 13.433956 6.969272 3.240774 5.006459 17.260980 5.092947
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.990962 7.055222 9.982855 5.259132 2.948028 4.422312 12.261804 11.177492 9.559123
[[145]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.070634 50.244935 20.609631 10.959765 6.787784 5.742480 4.344693 23.503851 7.099464 15.376133 9.882598
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.353587 15.793005 11.245553 6.442071 13.789988 12.589834 6.539461 3.291324 4.923151 17.511610 5.000523
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.777098 7.169237 10.140654 4.756383 3.097269 4.344831 11.669517 9.977260 9.492347
[[146]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.577694 50.064476 20.615404 11.150398 6.672136 5.752875 4.323509 23.329855 7.062195 15.653391 10.064505
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.710455 15.623551 10.463980 6.689086 13.645786 12.752878 6.230588 3.284299 4.784578 17.489111 5.284781
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.186505 7.260500 10.051774 4.888913 2.643397 4.449476 12.288466 10.166974 9.681507
[[147]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.677778 50.122961 20.455748 12.201403 6.825641 5.535211 4.174061 23.256097 7.274635 14.403852 8.234616
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.382402 16.559301 10.486725 6.728646 13.557763 12.734704 6.439089 3.367075 4.607001 17.546689 4.918421
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.105984 7.147337 10.236207 5.134965 2.717241 4.176464 11.847503 11.679251 9.825755
[[148]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.997652 50.077319 20.481477 12.422824 6.741336 5.447472 4.344859 23.410096 7.337755 15.567628 8.179561
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.211655 16.195962 10.327106 6.552921 13.398932 12.748324 6.437166 3.344666 4.700004 17.534940 4.800071
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.007591 7.395655 9.853874 5.131741 2.640636 4.576962 12.125042 10.335154 10.047364
[[149]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.338589 50.054716 20.204403 11.983731 5.858695 5.064653 4.302068 23.750046 7.236476 15.535596 8.192173
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.139949 16.009751 10.409106 6.538302 13.779021 12.819740 7.078126 3.486307 4.845698 17.857508 4.651679
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.229557 7.276328 9.733541 5.089180 2.738905 4.289076 12.695925 10.261851 9.930173
[[150]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.573525 50.198728 20.211319 12.136473 5.860610 5.217278 4.280597 23.579288 7.032841 15.736207 8.156973
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.977487 17.040352 9.946529 6.249648 13.411663 12.909755 6.666133 3.325153 5.149178 17.969433 4.688933
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.136037 7.284325 9.867812 5.095736 3.022137 4.504522 12.517991 10.077399 9.816190
[[151]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.099347 49.971108 20.105858 12.270082 8.057617 5.151490 4.478860 21.952304 7.023053 15.628580 8.310524
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.950789 16.299274 10.116688 6.282094 13.179399 12.732708 6.658562 3.226196 4.723349 17.885788 4.834106
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.226609 7.637804 10.462527 5.159918 2.977724 4.402406 11.740066 10.175539 10.139327
[[152]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.497218 50.156135 20.145871 11.901913 7.925051 5.344196 4.505518 21.846602 7.041217 15.697850 8.327856
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.945110 16.413157 10.197145 6.514487 14.076034 12.953903 6.565009 3.371757 4.666431 17.459825 4.864658
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.140056 7.484659 10.452119 4.934846 2.921089 4.538453 11.939453 10.190337 10.021034
[[153]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.694590 50.351993 19.951969 12.956597 6.328454 5.386725 4.391965 23.281002 7.226240 15.839127 8.495910
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.683827 16.252863 10.347108 6.352629 13.924148 11.978541 6.534520 3.494751 4.889820 17.449461 4.700808
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.996964 7.319473 10.800633 4.994183 2.816936 4.776127 12.056183 10.157424 9.665688
[[154]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.630929 49.825999 19.888261 12.661103 6.127954 5.285042 4.485410 23.529162 7.420992 15.577959 8.345874
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.009359 16.236579 10.119903 6.562131 13.710021 11.800500 6.696648 3.450716 4.832728 17.895537 4.486749
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.975711 7.428312 10.629083 5.144359 2.704870 4.708632 12.060617 10.383252 10.432048
[[155]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.065242 50.466606 20.035775 12.456743 6.114004 5.601979 4.402278 23.666756 7.041286 15.585154 8.330603
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.657219 16.145107 10.196285 6.342592 13.751056 11.996076 6.444170 3.208618 5.038229 17.908221 4.826193
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.236518 7.146395 10.324836 5.114912 2.773325 4.455394 12.020879 10.450038 10.746036
[[156]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.736076 50.368941 20.442517 12.114076 6.299138 5.306507 4.539116 23.528893 6.850867 15.667669 8.327483
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.426992 16.279593 10.168074 6.368641 13.755401 13.169958 6.319007 3.285352 5.305507 18.087914 4.767047
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.131983 7.309940 10.212927 4.997434 2.632150 4.328845 11.948462 10.231449 10.767429
[[157]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.833500 50.514256 20.441315 12.201921 5.910257 5.195763 4.495411 23.754955 7.871518 15.834893 8.436800
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.617004 15.658282 10.066286 6.091063 13.845971 12.965207 6.385541 3.283248 5.202488 17.289577 4.841587
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.220741 7.771880 9.989245 5.098421 2.706619 4.397420 12.013979 10.201942 10.658716
[[158]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.279509 50.273646 20.026095 12.118060 6.181818 5.012387 4.538659 23.920173 7.766107 16.324378 8.624215
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.737186 15.059954 10.276847 6.222708 13.925616 12.911588 6.635160 3.261529 5.077337 17.600399 4.611029
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.440153 7.486398 9.631883 4.832319 2.706085 4.321825 11.962540 10.195463 11.002808
[[159]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.495172 50.759238 20.114843 11.248789 6.018931 5.219910 4.843763 23.351443 7.701414 17.316790 8.081727
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.690794 15.385471 10.532415 6.165830 13.718437 12.836533 6.455530 3.418037 5.381852 17.226206 4.661661
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.247750 7.451071 9.841030 6.502141 2.627383 4.497522 10.311775 10.315065 10.749601
[[160]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.404932 50.882856 20.737615 11.055248 6.637617 4.919814 4.746358 23.438908 7.318906 17.787638 8.506317
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.188871 14.587986 10.720000 6.117094 13.259282 13.462639 6.592980 3.174825 5.602013 17.679159 4.974963
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.399358 7.570923 9.601223 6.463027 2.625718 4.354835 10.259784 9.830474 10.663613
[[161]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.176601 50.618530 20.354178 12.066308 6.485710 5.064391 5.065639 23.885529 6.852315 17.909335 8.521652
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.608987 14.548928 10.450832 6.153225 13.117802 12.266315 6.575840 3.189769 5.574721 17.578685 4.907861
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.318133 7.519920 10.313086 6.478539 2.486971 4.828288 10.220289 10.170405 10.353860
[[162]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.816509 50.905656 19.632611 12.677653 6.664199 4.734848 4.806081 24.012850 7.058649 17.774365 8.514052
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.635056 15.128931 10.319228 6.666433 13.203474 12.288265 6.401172 3.343286 5.562377 17.352513 5.009557
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.986246 7.697401 9.914706 6.506081 2.610401 4.852118 10.651609 10.802408 10.398224
[[163]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.803532 51.474948 19.468932 13.070986 6.746370 5.239609 4.875024 23.918704 7.178455 17.748062 8.664682
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.549730 14.738108 10.577143 6.086537 13.201430 12.375314 6.362831 3.191197 5.310257 17.706789 5.014290
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.951717 7.333067 10.005390 6.494770 2.833192 4.739202 10.365480 10.479117 10.395353
[[164]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.130889 50.539722 20.087135 13.106521 6.339325 4.978549 4.880104 23.714299 7.236420 17.638795 8.718130
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.906299 14.861757 11.682132 6.199468 12.575417 12.748100 6.532214 3.415804 5.594332 17.602532 4.821944
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.070638 7.116453 10.206422 6.480486 2.644737 4.808933 10.199147 10.735106 10.582264
[[165]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.272623 50.754325 20.322663 12.041527 5.878494 5.236223 4.980092 23.509772 6.747119 17.035123 8.840123
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.978538 15.400703 11.804514 6.426100 12.690050 13.112231 6.618651 3.272851 5.339541 17.214841 5.005065
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.316551 7.282958 10.384859 6.007893 2.619682 4.699339 9.978566 10.865123 10.459515
[[166]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.117828 51.535227 20.081955 13.081884 5.780867 5.214379 4.891029 24.272620 7.144010 17.155841 8.980899
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.772760 15.413734 11.605336 6.158300 12.688020 12.172083 6.534426 3.481228 5.283556 17.771920 5.204080
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.204379 7.436905 10.283517 6.338116 2.583789 4.500974 9.806633 10.627640 10.783108
[[167]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.753226 51.579800 20.209488 13.266245 6.087348 6.693950 4.864114 24.317055 6.785930 17.675880 8.819340
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.584577 14.954331 10.117191 6.027349 12.713580 12.736957 6.186047 3.529756 5.594769 17.497342 4.987319
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.158158 7.266185 10.081715 6.295011 2.704019 4.626582 10.064920 10.753073 10.938607
[[168]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.521011 51.656232 20.154771 13.251210 5.891737 6.847159 5.135459 24.449331 6.839103 17.871228 7.173620
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.324513 15.561345 10.028119 5.760550 13.008948 12.597690 6.084933 3.464045 5.291049 17.498665 4.928499
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.073197 7.655758 10.359126 6.171786 2.428185 4.494396 10.341363 10.649974 10.906566
[[169]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.637634 51.367617 20.345997 11.831868 6.036510 7.147063 4.664026 24.251409 7.431846 17.496783 6.819571
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.278707 15.651959 10.370795 5.528737 13.051276 13.637809 6.061491 3.291410 5.575199 17.528698 4.977073
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.261786 7.563218 10.016344 5.914126 2.602660 4.616939 11.528878 10.687376 10.689331
[[170]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.688564 51.470211 19.759098 11.919501 6.070125 6.931277 4.944577 24.041432 7.396640 17.571355 7.014938
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.485575 15.490805 10.292835 5.771530 13.013714 13.474435 5.990146 3.431514 5.700822 17.684389 5.040702
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.103168 7.817007 10.242156 5.910942 2.709423 4.513852 11.524000 10.384323 10.796845
[[171]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.382467 51.684286 19.608057 11.913126 8.056614 7.259755 4.902435 22.686430 7.057676 15.531343 6.875720
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.675485 15.370349 10.513353 5.450405 12.771782 13.994765 5.759268 3.275814 5.581893 17.499213 5.113397
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.970649 7.812451 10.258500 6.191069 2.726312 4.300520 11.821854 12.327226 10.936931
[[172]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.789651 51.759131 19.388229 12.275950 7.996105 7.275566 4.803214 22.730543 6.773378 15.928209 6.887111
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.489020 15.287690 10.451570 5.483290 12.608947 14.000146 5.963874 3.449913 5.607431 17.746689 4.876698
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.215821 8.009449 9.969726 6.140924 2.689041 4.503532 11.546754 11.948437 10.751849
[[173]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.913051 51.556131 19.606857 11.905798 7.818868 7.123417 3.993697 22.763684 6.830255 15.797656 6.982091
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.735985 15.195366 10.057635 5.819888 12.905492 15.443608 5.856012 3.457217 5.397609 17.833815 4.987982
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.855496 8.264365 10.225098 6.049154 2.544460 4.401143 12.670813 10.621625 11.110830
[[174]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.791568 51.564964 19.403761 10.794695 8.547092 7.057594 4.033336 22.728266 6.951636 15.785303 8.233656
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.874160 15.709020 9.825944 5.768927 13.240104 15.450630 5.749817 3.494476 5.532965 17.793632 5.232726
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.741932 8.433111 9.805037 6.021380 2.582866 4.718302 11.349307 10.652289 10.949332
[[175]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.687994 52.327713 19.763725 11.644207 6.008904 6.993993 3.916491 24.610714 7.362888 16.105198 8.579195
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.169520 15.702273 10.007255 5.607281 13.249264 14.808349 5.844775 3.478379 5.172476 17.800441 4.745753
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.118976 7.963545 9.886076 5.868683 2.557968 4.811285 10.979017 10.662448 11.605533
[[176]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.314964 52.557499 19.634762 11.871838 5.937345 7.183399 3.623680 24.766684 7.323005 16.251932 8.737860
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.432835 16.966392 10.105578 5.548129 13.943912 14.538863 5.747058 3.611627 5.008565 17.898735 4.794890
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.107047 8.063853 9.686570 5.864413 2.647797 4.901835 10.707107 8.520998 11.422884
[[177]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.591630 52.001192 19.531963 11.915383 5.788095 6.881879 3.746099 24.907579 7.432093 16.303049 9.022863
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.386833 16.449600 10.439548 5.860790 14.148170 14.746808 6.080182 3.510180 4.989781 18.040891 4.871355
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.372412 8.172499 9.515369 7.098952 2.571585 4.534621 9.540956 8.326986 11.149715
[[178]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.204292 52.046042 19.713370 11.173097 6.901681 7.060234 3.647791 26.384714 6.884306 16.142943 9.288322
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.558826 16.985467 10.425159 5.905188 12.751443 13.989806 5.813663 3.291727 5.103087 17.990137 4.797252
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.168722 8.119806 9.587669 6.899904 2.595367 4.153862 9.615533 9.651361 11.385034
[[179]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.118852 52.141801 18.229206 11.209902 7.031726 6.876917 3.713612 26.466495 6.862258 16.362741 9.191965
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.465946 16.788557 10.383522 5.931783 14.026872 13.756202 5.925667 3.481814 5.113609 18.201709 4.786570
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.070676 8.005726 9.856271 7.087433 2.612715 4.086280 9.483801 9.599238 11.374619
[[180]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.483228 52.056588 18.428964 11.835915 7.119272 6.694621 4.204434 25.254835 6.574160 16.378756 8.580244
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.394669 16.960700 9.230997 5.656525 14.761329 13.336983 6.081593 3.215150 5.294183 17.631953 5.092148
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.545908 8.704278 9.910365 7.112400 2.652252 4.005319 10.647116 9.518367 11.315116
[[181]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.352783 52.382061 19.982276 11.582203 6.992588 7.620034 4.116263 25.163085 6.297347 16.561395 8.833537
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.071918 17.241448 9.976833 5.773220 13.151583 13.099572 6.014363 3.312610 5.114227 17.379391 4.022756
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.307860 8.899960 9.542559 6.905779 2.590935 4.271932 10.631753 9.854579 11.471877
[[182]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.260720 52.542411 20.117275 11.162775 7.056001 8.104460 4.137335 24.980058 6.430703 16.570204 8.847305
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.010561 17.137191 9.582986 5.926910 12.918723 12.993825 5.929648 3.382774 4.798389 18.255464 4.119094
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.148758 8.838162 9.393018 7.164309 2.655226 4.217435 11.065166 9.725994 11.120529
[[183]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.873496 52.499333 18.638103 10.811910 7.107512 8.195539 4.132280 25.473677 6.641154 15.391744 8.985359
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.356615 15.508035 9.555251 5.834803 13.465083 13.620923 5.680323 3.447952 5.126064 17.813984 4.122150
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.284058 8.983389 9.809102 5.564527 2.358128 4.299051 12.340241 12.649904 10.810685
[[184]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.468891 52.506178 18.684360 11.384797 7.641847 8.183654 4.129281 24.991868 6.601168 15.371801 8.665350
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.197362 15.836881 9.388800 5.845616 14.041033 13.737361 7.756662 3.521173 5.239827 17.669749 3.850518
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.851949 8.689260 7.784040 5.509818 2.520596 4.223550 12.038102 12.521423 10.760114
[[185]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.588830 52.161213 18.355733 12.028673 7.438809 8.115921 4.223387 27.879387 6.713162 13.700402 8.584424
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.745521 15.999320 9.458442 5.714236 13.944017 14.575815 7.564876 3.763214 4.863454 17.990489 3.996920
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.533028 7.372609 8.001239 5.629193 2.694440 4.095064 12.664601 11.667754 10.253469
[[186]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.588862 52.121698 19.438193 11.738373 7.263663 8.187309 4.088483 28.258326 5.878385 13.874280 8.673164
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.523239 16.172696 9.514053 5.873156 12.049531 14.689252 7.599833 3.838507 4.855410 19.404143 3.925452
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.819654 6.970697 7.909144 5.443290 2.687002 4.293475 12.753712 11.661582 10.414032
[[187]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.689968 52.165830 21.253037 11.860471 7.304726 8.067658 4.129443 24.492423 5.585263 13.570438 8.882061
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.455621 17.218075 9.386136 5.698337 11.904275 15.023261 7.580428 3.808140 4.632866 20.420001 4.553511
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.960702 7.082111 8.012001 6.665496 2.752916 4.101140 11.539402 11.697163 9.854817
[[188]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.231196 52.478829 21.493557 10.556638 7.289294 8.146071 4.119043 23.401055 5.910545 13.540269 8.938740
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.744763 17.344477 9.414459 5.673889 12.117107 15.409967 8.039872 3.507746 4.712563 20.149328 4.526413
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.726914 8.367037 7.905208 6.503000 2.645465 4.302959 11.770370 11.781125 9.476899
[[189]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.251570 51.674103 21.282697 12.500570 6.984516 8.003192 3.873707 25.084122 6.014915 13.484106 8.879225
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.945252 17.505827 9.661268 6.177964 12.156981 15.399822 7.653502 3.438544 4.681217 19.857590 4.673901
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.962671 7.218231 7.010767 6.470155 2.722583 4.141984 11.108899 11.644906 9.589517
[[190]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.291359 52.022197 21.123963 12.105924 6.852773 7.615093 3.965583 25.229306 6.259075 13.485997 8.315943
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.552034 17.551610 9.927415 6.126251 11.800010 15.980948 7.702184 3.397052 4.337944 19.939107 4.595377
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.034328 7.148463 6.845918 6.808029 2.740367 4.237888 11.391452 11.645909 9.965622
[[191]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.253285 51.699517 21.113855 11.862009 6.697493 6.238908 4.329079 24.044445 6.490305 14.536867 8.635848
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
12.281783 17.523008 9.727846 6.320483 11.897165 14.490754 7.557060 3.426809 4.601558 20.073538 4.183822
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.758507 8.394587 7.052440 6.849311 2.912700 4.165735 11.370503 11.623926 10.195347
[[192]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.898281 51.688683 20.960166 10.819469 7.616416 6.390000 3.813261 23.988893 6.323012 13.437104 8.838018
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
12.438139 18.704468 9.932822 6.201283 12.004096 15.386273 6.711937 3.482153 4.721944 19.973435 4.505648
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.763856 8.522998 7.299870 6.946315 2.686790 4.186642 11.939645 11.365195 9.821185
[[193]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.997474 51.601341 20.755370 10.736105 7.839120 6.131015 4.098050 23.953511 6.140101 14.845719 9.031730
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
12.299535 18.995456 9.799068 6.021101 11.834458 14.189418 7.212683 3.477849 4.791859 19.921866 4.578346
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.769373 8.163377 7.711210 6.694533 2.741775 4.279375 12.155178 11.364316 9.769336
[[194]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.456300 51.519647 19.656833 10.507093 7.823601 5.962598 4.059449 24.060469 6.008340 14.741078 9.120538
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
12.299149 19.241483 10.051048 6.104638 13.005354 14.297225 7.019700 3.490089 4.828969 19.834266 4.419258
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.575521 8.202356 7.897505 5.701922 2.545199 4.008211 13.471004 11.215217 10.212943
[[195]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.494328 51.402400 19.637818 10.790129 8.224934 5.756006 3.762573 23.390904 6.244574 14.628714 8.863647
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
12.369104 18.560220 10.389887 6.065238 13.518488 13.891661 7.293552 3.457308 4.653176 20.043879 4.137071
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.486110 8.650509 7.850009 7.260325 2.725266 4.116017 11.698316 11.713027 10.611193
[[196]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.190586 51.549090 17.163434 11.005218 8.169708 5.987503 3.842558 23.386135 6.230802 15.007096 9.272416
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
12.398751 18.590041 10.145857 6.273348 13.763082 13.942623 7.074188 3.512676 4.337768 19.940120 4.124212
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.700278 8.898312 7.935404 7.338216 2.492605 4.213558 11.410485 11.370846 10.643454
[[197]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.510063 51.327835 18.320981 11.019118 7.809478 4.523703 3.918821 23.114869 6.372632 14.793239 9.054349
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
12.545937 18.910551 10.243580 6.187823 12.580288 13.497983 7.053208 3.347906 4.844032 20.192997 4.396108
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.252431 8.745032 9.533465 7.036604 2.509000 4.033022 11.594571 11.293957 10.707027
[[198]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.615060 50.876956 18.261771 11.073816 8.369264 4.588759 3.881003 23.526292 6.214787 15.194626 8.844086
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
12.388897 18.876236 8.547131 6.396530 12.380560 14.005960 6.915860 3.274370 4.683703 20.087755 4.236216
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.104024 10.115581 9.284616 7.420707 2.841282 4.010717 11.419712 11.240680 10.594238
[[199]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.500264 51.513082 18.699962 11.294350 8.100956 4.473772 3.774158 25.062998 7.299271 15.166616 8.952980
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
12.843352 18.115401 8.591091 6.244190 12.469812 14.467111 6.913229 3.158545 4.305413 19.815476 3.930716
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.300463 8.747869 9.128426 6.186444 2.936586 4.180210 11.260279 11.198345 10.043328
[[200]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.532418 51.166944 19.231709 11.016071 8.087129 4.552321 4.019655 23.155183 7.347738 15.059034 8.974043
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
12.971379 17.897837 8.898027 5.881522 13.175828 14.748842 6.788636 2.792738 4.261914 20.001751 3.930662
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.132735 8.576670 9.286466 6.267249 2.778718 4.343258 11.238722 12.142135 10.884659
[[201]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.450509 51.033292 17.910997 10.938188 8.073176 6.165493 4.139941 22.679105 7.591327 15.315483 9.131817
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
12.257835 17.633281 8.996381 6.369596 14.798700 14.830436 6.421829 2.963177 4.609473 19.736993 3.926410
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.020828 8.846270 8.084272 6.327174 2.636460 4.268304 11.432504 12.202984 10.710600
[[202]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.668088 51.775291 18.306370 10.625743 8.000870 6.250149 3.958660 21.097340 7.334934 15.035253 9.022906
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
12.326544 17.164421 9.248464 6.205804 14.848438 14.363602 6.539879 3.015315 4.934368 19.414049 4.091675
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.430474 10.270437 8.020361 6.135937 2.706745 4.308923 11.343825 12.260041 10.934480
[[203]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.743810 52.233774 18.043864 10.118113 8.234143 4.582055 4.012666 22.580749 7.406202 14.586439 8.916321
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
12.597324 17.799433 8.865392 6.128801 14.596034 14.459889 6.699443 3.185865 4.643604 20.810522 4.044875
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.093588 9.067868 9.702514 6.212516 2.928909 4.183705 11.257542 11.747895 11.170765
[[204]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.844185 51.865510 18.024298 10.618564 8.180264 4.658596 3.944643 22.711837 7.195483 14.964057 8.935686
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
12.519052 17.394357 8.491555 6.357839 14.634444 15.795770 6.556209 3.372104 4.168065 21.531363 4.250979
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.056379 9.517754 9.889895 6.319054 2.812179 4.700800 10.922133 10.150155 10.563855
[[205]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.143646 51.341293 17.561845 10.674405 8.055573 4.530486 4.170023 23.433059 7.349489 15.074344 8.962558
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
12.555066 18.531837 8.575628 6.329017 14.426663 15.982511 6.639255 3.107054 3.962488 21.310631 4.554173
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.125833 9.302629 9.280599 5.211384 3.000803 4.770816 12.442813 10.540439 10.423729
[[206]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.451579 51.754238 17.336706 10.639471 7.870888 4.734045 4.255103 24.097209 7.142709 14.874021 9.069335
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
12.521098 18.290860 8.887395 6.174766 14.488778 15.796146 6.878618 3.092403 3.877109 21.322045 4.447326
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.141712 9.308373 9.341202 4.961410 2.658743 4.679186 12.514921 10.602670 10.371854
[[207]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.794332 51.178568 17.485315 10.788862 8.115584 6.024360 4.262584 26.677407 7.192294 14.731817 8.893058
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.677777 16.655489 8.507526 6.524582 14.702779 15.934692 7.158639 3.426449 4.224931 21.383688 4.273071
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.904330 9.003512 7.244721 5.184548 2.743915 4.925875 12.209433 11.040758 10.947246
[[208]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.956963 51.270001 17.406713 10.992966 8.179773 4.504499 4.147572 26.465624 6.859731 14.906870 9.772183
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.884234 16.652901 8.382967 6.421258 14.771903 16.076492 7.186190 3.500346 4.607165 21.534756 4.139120
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.960777 8.755745 8.569331 4.601942 2.738366 4.563473 12.664147 10.999302 10.669206
[[209]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.425744 51.116694 17.647096 11.102230 8.119987 4.668261 3.985723 26.310172 7.361472 14.959809 8.526884
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.170254 16.576503 8.296032 6.381552 14.732455 15.806619 7.096612 3.410040 4.673444 21.632866 4.170867
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.148733 8.861542 8.740186 5.281593 2.614158 4.282868 12.439537 11.536636 10.940161
[[210]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.309340 52.057025 19.312769 10.847031 8.325735 4.393487 3.884381 25.841938 7.159232 14.849207 8.701109
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.222962 16.166942 8.252289 6.314372 13.297153 15.939539 7.225680 3.538288 4.807164 21.222170 4.284063
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.955272 9.136612 8.881677 4.847162 2.710449 4.795506 12.773950 11.427293 10.192942
[[211]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.472881 51.372085 19.526105 12.487296 7.547320 6.301129 3.900621 26.029024 7.059939 14.672718 6.333587
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.192701 16.773069 8.559840 6.583811 13.125557 16.092119 7.179175 3.456833 5.289718 21.202615 4.062112
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.942480 9.164468 7.034733 6.193592 2.661294 4.472125 11.654057 11.404998 10.801675
[[212]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.886399 51.386446 19.641291 12.306931 7.272572 4.625581 3.778565 26.102118 7.207593 14.877441 6.672867
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.062162 16.105254 8.576192 6.464809 13.078481 16.353159 6.843157 3.483701 5.450235 21.627546 4.171629
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.563633 9.580790 9.113891 6.136700 2.726447 4.491849 11.496795 11.259429 10.504248
[[213]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.791056 52.064241 18.204489 9.763036 7.383573 4.461800 3.905088 25.936401 7.209244 14.944054 8.972798
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.691742 15.930739 8.756691 6.350700 14.627177 17.820702 6.863189 3.496796 5.505417 21.661703 4.339238
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.655906 9.522010 9.001392 6.160028 2.499584 4.400085 10.243728 11.232671 10.609586
[[214]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.832401 52.157841 17.869917 11.749370 7.443525 4.470498 3.728445 27.309422 7.553050 15.056543 6.727062
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.624665 16.264403 8.907301 6.420948 13.183990 18.104098 6.421377 3.475988 5.567299 21.479650 4.146276
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.868325 9.348441 9.415879 6.252752 2.373927 4.197837 10.396081 11.372869 10.281301
[[215]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.327625 52.266319 17.880539 12.131496 7.316996 4.552116 4.059073 27.078973 7.378599 14.674570 7.515493
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.940472 16.527269 9.051752 4.672580 13.206055 17.238681 6.557665 3.291874 5.111998 20.937583 3.978495
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.338312 9.276661 8.851775 6.128502 2.299734 4.459907 10.352213 12.600587 11.434503
[[216]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.083706 51.707008 19.336199 12.441048 7.673827 4.259620 4.076746 25.886672 7.321967 15.270285 7.240455
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.961340 16.633717 8.459824 4.740467 13.231627 17.191857 6.768205 3.368136 4.992596 20.932712 4.059228
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.985144 9.381992 9.049706 6.248886 2.352674 4.680895 10.349854 12.818217 11.025745
[[217]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.141581 51.742359 17.733924 12.345551 8.271155 4.219113 4.236514 27.378919 7.221084 15.428715 7.082358
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.283577 16.556648 8.671818 4.564539 13.194974 17.501060 6.230324 3.502084 4.942423 20.970066 4.176434
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.867571 9.079096 8.954985 6.124657 2.397524 4.699658 10.437738 12.845802 10.899121
[[218]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.975462 52.160366 17.732917 12.261264 8.054977 4.516460 3.780907 27.228305 7.249347 15.057758 7.634666
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.960050 16.556753 8.660126 4.348135 13.043399 17.554413 6.334921 3.272459 4.892150 20.921260 4.382269
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.667456 8.880290 8.933680 6.368389 2.675603 4.511512 10.276339 12.693223 11.229980
[[219]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.724502 52.422347 17.745670 11.908531 8.257036 4.554705 3.834901 27.138510 6.934802 14.828898 7.512360
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.949943 16.757035 8.154896 5.167256 13.344018 17.674258 6.379845 3.261567 4.769393 20.716122 4.345239
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.536748 8.705273 9.213739 6.666372 2.560479 4.696075 10.365617 12.807640 11.097314
[[220]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.054602 52.116879 17.418670 11.154131 7.925983 4.471143 4.034026 27.501757 7.159986 14.938524 7.764407
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.830612 16.580262 8.530788 4.527779 13.090077 18.473973 6.347335 3.270915 4.649977 21.311430 4.277786
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.187873 8.766499 9.017658 6.000255 2.674970 4.581507 10.889423 11.855737 11.685058
[[221]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.410123 52.083339 17.527771 12.241625 8.067743 4.610043 4.066894 27.673237 7.201566 14.552866 7.745321
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.872396 17.093179 8.325702 4.644153 13.218687 19.096475 5.991715 3.365286 4.549489 20.949527 4.499425
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.234011 8.786540 8.696011 5.812896 2.536705 4.938691 10.293780 11.352293 11.654731
[[222]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.836558 52.001222 18.267570 11.820004 8.100910 4.562980 4.235027 27.296229 7.165393 14.271296 7.342536
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.748475 17.054284 8.508220 5.407401 12.368135 18.766652 5.763083 3.551382 4.691728 21.031401 4.501011
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.057642 8.982169 8.588152 6.044390 2.555619 4.712714 10.709914 11.511760 11.795416
[[223]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.994057 52.439784 18.174685 11.849574 7.989685 4.492276 4.395993 27.636013 7.131089 13.314755 7.104228
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.725527 16.840530 8.568699 4.703428 12.482942 19.694841 5.941829 3.362479 4.731479 20.732015 4.535760
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.550212 9.321255 8.568761 6.143268 2.658780 4.753517 10.549936 11.431461 11.922149
[[224]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.157970 52.657705 18.195128 13.028771 6.409487 4.542138 4.105468 27.413269 7.174765 13.128667 7.019425
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.822926 16.792019 8.690420 5.229466 12.481155 19.731872 6.191857 3.580207 5.297543 20.477927 4.376765
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.210823 8.922522 8.560103 6.607238 2.848680 4.691723 10.502341 11.367940 12.055211
[[225]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.073546 53.376849 18.380854 11.320284 6.000490 4.515729 4.195055 28.550856 7.274362 13.398954 8.875978
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.778182 16.249823 8.861340 4.488664 12.539677 20.129461 6.274986 3.614560 5.244645 20.726517 4.519906
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.639884 9.279533 8.673037 6.615341 2.434157 4.736952 10.551771 11.149080 11.041121
[[226]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.455448 53.220740 18.460353 11.226424 5.907903 4.408356 4.105793 28.561843 7.223658 13.641253 9.546143
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.359205 16.072195 9.072138 4.673369 12.151834 20.378613 6.112880 3.216422 5.418774 21.083286 4.646482
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.929923 8.268381 8.760462 7.611689 2.653625 5.085122 10.082971 11.184066 11.020064
[[227]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.631946 53.488601 18.337052 10.003295 7.239250 4.342144 4.145603 28.424101 7.285292 13.551717 9.644157
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.508417 16.355295 8.873531 4.563438 12.111201 20.259704 5.935494 3.485650 5.366753 20.689316 5.056006
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.343607 7.978087 8.953903 7.643774 2.526010 5.002053 10.104133 10.982107 10.821063
[[228]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.094381 53.279106 18.245566 11.059908 5.742907 4.606241 4.397337 28.660563 7.063962 13.831845 9.837629
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.786817 16.185330 9.032072 4.495251 12.421307 20.211085 5.772130 3.668307 5.298432 20.837580 4.994052
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.410278 8.273326 8.366379 7.777936 2.626820 4.940693 10.446515 10.810471 10.602299
[[229]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.480807 53.418950 17.779031 11.040297 5.891754 4.687000 4.494027 28.495717 5.745127 13.737250 9.626833
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.727806 16.348289 9.250443 4.617514 12.276065 20.277297 5.789118 3.668109 5.135069 21.576635 4.852462
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.523112 8.306336 8.574136 7.483846 2.653388 4.622796 11.423680 10.848005 10.916352
[[230]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.392068 53.498452 17.825202 11.026036 5.940778 4.585468 3.981948 28.731401 6.057751 13.777560 9.685938
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.659443 17.112644 9.182625 4.259826 12.036003 20.474860 5.731632 3.674974 5.393932 21.261020 4.717021
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.363881 8.327453 8.380496 6.206970 2.733341 4.676538 11.583801 10.891269 12.195560
[[231]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.685499 53.312452 17.814666 10.570453 6.144908 4.849983 4.047110 28.551739 6.087234 13.648810 9.395180
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.507046 17.201131 9.269845 4.458073 12.136315 20.504111 5.896609 3.571490 5.395376 21.429078 4.699830
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.315654 8.321821 8.430968 6.055462 2.605619 4.614263 11.837739 10.923697 12.059702
[[232]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.279389 53.384521 17.847733 10.519002 5.946330 4.886434 3.921658 28.312645 5.590889 13.659031 9.707232
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.695563 17.287397 9.045489 4.613899 12.100654 20.533736 5.795368 3.544281 5.406841 21.007916 4.810561
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.605798 8.073674 8.701042 6.117366 2.525064 4.695328 11.810030 10.733863 12.457079
[[233]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.987973 53.456742 17.895561 9.572728 7.135634 4.713763 3.952838 28.672309 5.720893 13.959978 10.121240
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.564460 17.378361 8.711980 4.242500 12.073630 20.568796 5.788969 3.431618 5.623759 21.332868 4.975161
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.808464 8.228542 8.668802 6.275980 2.565739 4.092048 11.900036 10.775257 12.122507
[[234]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.918600 53.834899 17.229242 10.138878 7.403108 4.717359 3.429276 28.477464 5.748295 13.733880 9.893245
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.632198 18.108850 8.991830 4.199966 12.469870 19.901897 5.856582 3.387256 5.331662 21.218641 5.266492
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.777260 8.159960 9.038965 6.295554 2.742706 4.051261 11.748082 10.790778 12.014185
[[235]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.044826 54.278389 17.177072 10.056851 7.490700 4.731084 3.582522 28.410027 5.691437 13.835576 9.233177
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.623619 18.199616 8.757250 4.419540 12.356686 20.182019 5.973329 3.362475 5.575625 21.427338 5.188346
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.520230 7.979210 9.075423 6.379740 2.575801 3.995612 11.794512 11.044374 12.032545
[[236]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.179694 53.414186 17.371687 12.573716 7.354459 4.856222 3.260604 28.822609 6.160421 11.880820 9.109502
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.200162 18.380516 8.478354 4.349591 12.332964 21.167084 5.845919 3.470633 5.572808 21.483958 5.053656
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.768942 7.821679 8.575749 6.691620 2.939077 4.004047 10.977042 11.185243 12.102710
[[237]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.647587 53.485165 17.236345 14.912199 7.569079 4.831929 3.476935 29.229083 6.194666 11.862534 7.935889
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.162031 17.626735 8.538583 4.487803 12.521943 20.940961 5.705366 3.260415 5.110375 21.498654 5.102020
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.633202 7.661765 8.779077 6.432017 2.701536 3.911736 11.216918 11.230446 11.830538
[[238]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.883641 52.710068 17.327147 12.639284 7.465973 5.094304 3.445519 29.273809 6.250576 10.629235 11.189592
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.108662 17.051892 8.330276 4.619432 12.772538 20.528416 5.779769 3.452227 5.258089 21.450122 5.051592
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.722536 8.053770 8.964396 6.421868 2.411691 3.933789 11.455285 11.525578 11.811286
[[239]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.610641 52.009211 17.517306 14.234657 7.744863 4.946224 3.780673 28.798444 6.613537 10.958768 8.211432
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.107128 17.346707 8.350966 4.424064 13.717902 20.892435 5.938512 3.165861 5.280723 20.914170 4.947876
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.695971 8.287338 8.887374 6.372387 2.557147 3.976736 11.533157 11.884446 12.271419
[[240]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.293039 52.198732 17.756243 12.737911 7.700836 4.759087 3.535847 28.686564 6.319351 10.661690 12.440715
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.186984 16.698393 8.488399 4.508420 14.160580 20.849662 6.112024 3.244618 5.396236 21.251512 5.273389
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.330311 7.418302 9.120440 6.361485 2.651064 3.879635 12.353683 11.883941 12.157810
[[241]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.735615 51.623336 17.497427 11.938361 7.843322 4.582750 3.643950 30.777851 6.252128 10.717437 12.394857
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.227543 15.271990 8.638664 4.792604 14.180776 20.876382 6.060954 3.164289 5.254411 21.943161 4.887635
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.309857 7.602039 10.183975 6.827755 2.685293 3.801197 12.252684 10.162872 12.647740
[[242]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.943798 51.843383 17.873946 12.286744 7.422374 4.830103 3.494201 30.835346 6.509607 10.426613 12.566600
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.075951 15.232330 8.579986 4.403005 13.800129 20.861282 5.870963 3.142096 5.661272 22.121122 4.855957
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.290965 7.558835 10.077900 6.674312 2.582342 4.062846 12.190088 10.041749 12.754841
[[243]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
43.613869 51.927235 17.974355 14.223040 7.667972 4.775451 3.588034 31.011842 6.021079 11.533716 9.424262
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.110737 16.081175 8.143541 4.350766 13.990871 20.460627 6.137208 3.044908 5.364012 21.769796 5.278906
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.395549 8.110809 10.048942 6.237787 2.491834 3.922303 12.483623 9.408200 12.656716
[[244]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
43.477532 51.676564 18.129966 14.325226 8.156211 4.627500 3.642445 31.210647 5.994160 12.052027 9.267945
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.938423 16.086274 8.244398 4.603547 13.829891 21.144402 5.793235 3.167243 4.692208 21.887791 4.903146
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.910941 7.845820 9.723763 6.281298 2.645655 3.838505 12.876790 9.499225 12.662628
[[245]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
43.590901 51.485408 18.122389 14.560403 8.185232 4.690452 3.381772 30.944778 5.910858 12.100121 9.198915
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.695185 16.350821 8.367431 4.497748 13.773772 21.373084 6.050371 3.041126 5.094332 22.163730 4.878223
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.894869 7.449461 10.095529 6.446769 2.671832 3.820219 12.691157 9.355768 12.535424
[[246]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
43.309941 51.490355 17.961159 14.475892 8.457549 4.507466 3.349729 30.545378 6.152251 12.003355 9.418501
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.682227 16.120691 8.493307 4.416400 13.945666 21.291285 5.834916 3.101411 5.266018 21.537208 5.191436
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.161303 8.307815 9.737205 6.603647 2.664635 3.947125 12.645094 9.355507 12.802115
[[247]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.623232 51.262932 18.392495 14.513940 8.062397 4.685762 3.421187 30.929571 7.043516 12.012734 8.814064
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.955762 16.369344 8.615075 4.461999 13.561265 22.978024 5.722148 3.150007 5.422744 19.963778 4.981853
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.671339 8.229875 9.742488 6.623206 2.755954 3.915612 12.599348 9.093517 14.697067
[[248]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.969091 51.250768 18.104015 14.049148 8.189025 4.607732 3.316716 31.029435 6.240127 12.014408 6.903747
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.541349 16.593705 8.878862 4.514811 13.658134 22.914417 5.686733 3.261276 5.835703 19.974097 5.024786
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.726655 8.130289 9.849331 6.299646 2.770917 4.105423 13.131046 8.976481 15.007466
[[249]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.788500 51.124510 18.550091 14.378887 8.326923 4.527870 3.255317 31.426382 6.373938 11.836902 6.780676
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.539745 16.663780 8.647460 4.487438 13.785247 22.998862 5.776372 3.258909 5.959481 19.673170 5.280936
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.764696 7.821975 9.809872 6.407307 2.685492 3.930731 13.208519 8.920489 14.897515
[[250]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.056705 51.281270 18.473846 14.129837 8.886764 4.678345 3.348489 30.942597 6.902692 11.795066 6.914339
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.612966 16.424189 8.520877 4.420951 14.046587 22.814256 6.038394 3.281644 5.362792 20.085308 5.196386
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.508391 7.510764 9.529620 6.491741 2.675126 4.059626 13.273972 9.133099 14.901942
[[251]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.453880 51.101371 18.583883 13.947914 8.543651 4.557641 3.253180 31.073245 6.672037 11.905770 8.903847
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.810461 16.391999 8.335363 4.487698 14.278217 22.522184 5.826300 3.266892 5.369972 19.932912 5.239880
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.086610 7.700611 9.619250 6.524498 2.763579 3.997261 13.045334 9.238095 15.441755
[[252]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.668294 51.065666 18.498361 13.520096 8.609279 4.692665 3.274087 31.314710 6.721389 12.194365 6.820379
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.700508 16.921530 8.717854 4.359898 12.917120 22.405714 6.081303 3.114989 5.451751 19.832932 5.390296
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.806731 7.618631 9.811000 6.417800 2.756604 3.806623 13.113625 10.565841 15.416543
[[253]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.855030 51.424817 18.461808 13.789656 8.454080 4.474209 3.199525 31.016306 7.409468 12.229882 8.992297
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.015322 17.579307 9.017519 4.464008 12.986340 21.294148 6.031298 3.170244 5.134159 19.835095 5.231477
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.784369 7.534553 9.891105 6.193104 2.733729 3.863844 13.242837 10.570435 15.496073
[[254]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.398405 50.879114 18.449430 13.767538 8.303776 4.507397 3.273760 29.531064 6.509061 12.159705 8.953675
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.069953 15.944229 8.892274 4.362124 12.783292 22.517479 5.983743 3.202427 5.218794 19.869538 5.506756
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.875267 9.070314 10.238621 6.377402 2.897523 3.998680 12.703033 10.993129 17.481688
[[255]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.650358 51.340932 18.402526 15.218494 8.127810 4.509955 3.371911 30.025862 7.336122 12.175290 9.190838
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.905982 15.902724 8.482940 4.191995 12.685325 21.381817 5.849846 3.263023 4.819425 19.861601 5.451368
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.869987 8.677443 10.334710 6.255725 2.911732 4.104273 11.553590 11.716666 17.224319
[[256]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
43.647924 51.219500 18.158073 14.179874 7.748320 4.557403 3.331126 27.923705 7.279317 12.158375 9.042738
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.886626 15.808496 8.777389 4.461003 12.940316 21.621495 5.872137 3.547363 5.104147 19.688587 5.327999
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.788736 8.778545 10.218795 6.212110 2.872267 4.116796 12.415218 13.586062 16.973573
[[257]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
43.437372 51.102427 18.096552 14.229945 8.582597 4.615530 3.362970 27.855119 6.144574 11.925119 8.918470
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.715511 16.187373 8.843864 4.349420 13.246814 24.945583 6.018592 3.522866 4.999928 20.112898 5.434628
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.639442 9.084606 10.087142 6.278595 2.769190 4.239030 12.198888 13.178483 14.620734
[[258]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
43.278197 51.287852 18.043266 14.432809 8.308235 4.373569 3.354556 28.180938 6.140477 11.737220 8.686170
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.669230 16.040985 9.154591 4.438680 13.734141 25.014604 5.818717 3.473439 4.962600 20.028876 5.467729
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.256186 8.630125 10.125429 6.242870 2.830269 4.253192 12.577846 12.946652 14.770308
[[259]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
43.171914 51.677425 18.076526 16.513389 8.091654 4.325353 3.372281 27.398161 6.378055 11.483782 7.028750
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.608527 16.862185 8.571671 4.457737 14.092075 25.011292 5.680603 3.694177 4.950944 18.675649 5.299956
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.990677 8.801724 9.804343 6.138484 2.792020 4.221041 12.293060 12.999415 14.958068
[[260]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
43.657508 52.122113 17.615092 16.346328 7.932256 4.455511 3.442860 26.976973 6.564239 11.574771 7.144899
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.582489 16.590973 8.770571 4.581519 13.872561 25.179756 5.396659 3.362449 4.872806 18.611999 5.313330
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.942942 9.108462 9.996266 6.017703 2.776581 4.205412 12.855890 13.061790 15.051869
[[261]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
44.242465 52.154448 17.317880 16.390462 7.890731 4.515138 3.716406 27.528626 6.690006 11.870682 9.160255
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.499349 16.218542 8.731790 4.323535 14.013034 25.366949 5.331439 3.407005 4.892269 18.696585 5.198293
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.906350 8.731797 9.765334 6.018857 2.763898 4.247399 12.612618 13.047170 15.287051
[[262]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
44.366066 52.526511 17.442021 17.758988 8.159660 4.767124 3.745661 27.304535 6.498126 11.972973 9.036940
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.573939 15.547916 9.173937 3.958380 13.824866 23.472341 5.451380 3.238577 4.733242 20.781775 5.151433
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.956688 8.875163 9.545586 6.044148 3.024262 4.260138 11.021665 13.261673 15.284509
[[263]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
44.178986 52.286984 17.369500 17.924458 8.012122 4.466737 3.562194 27.499787 6.473619 11.864863 9.389371
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.930213 16.076830 8.932572 4.081158 13.825312 25.551001 5.292346 3.300991 4.709850 19.258135 5.181529
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.916599 8.674039 9.671039 6.093270 2.896606 4.141116 11.046493 12.679135 15.398339
[[264]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
44.142909 51.957539 17.326422 17.741346 8.158632 4.564164 3.752596 27.886127 6.215616 11.910166 9.690219
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.664166 15.866916 9.142918 3.906100 13.715789 23.962121 5.545154 3.437455 4.623876 20.739561 5.158585
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.817308 8.665291 9.493006 6.088918 2.853372 4.287844 11.108447 12.783055 15.804764
[[265]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
44.312748 52.162922 17.073767 18.261721 8.089387 4.819920 3.909929 27.920327 6.264331 11.685170 9.592573
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.955786 15.623805 9.147411 4.064066 15.578866 23.704683 5.560114 3.476038 4.365123 19.408894 5.241022
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.308219 8.572103 9.418000 5.935546 2.846595 4.064481 11.374877 12.715381 15.804492
[[266]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
44.834428 51.929708 17.491685 18.252848 8.076608 4.753570 3.841235 28.112854 6.347646 11.973593 9.686422
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.992747 15.316809 9.268114 3.717241 15.539744 23.429964 5.435840 3.639551 4.456733 19.171045 5.373385
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.019141 8.908847 9.897397 6.079764 2.898631 4.089117 10.523407 12.762290 15.528782
[[267]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
44.611291 51.963501 17.316597 18.482234 10.691386 4.733541 3.791608 26.231034 6.340282 12.337062 9.988099
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.583869 14.953384 9.243089 4.169992 16.717480 23.615790 5.272564 3.522640 4.432356 19.085642 4.743260
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.543995 8.642728 9.802907 6.114983 2.735117 4.056439 10.662130 11.944861 15.299788
[[268]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.243041 51.979896 17.698668 18.252103 10.556325 4.594393 3.801350 26.611717 6.855414 10.834194 12.317387
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.431163 13.462680 9.089075 3.902116 16.464949 25.592165 5.208045 3.486234 4.661889 16.699707 4.810448
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.554531 8.543819 8.881995 7.494857 2.538814 4.063637 10.273776 12.645864 15.012304
[[269]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.967418 52.020571 17.080409 18.535960 10.562237 4.642492 3.735942 26.782729 6.779032 11.067591 12.466695
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.332736 12.789403 9.284676 3.962403 16.077863 25.594480 5.692918 3.607324 4.926250 14.933562 4.857129
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.882443 8.639904 8.785777 7.399903 2.603466 4.248753 10.266017 12.567925 14.688810
[[270]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.963112 51.849458 16.392022 18.547401 10.453392 4.424543 3.716748 26.608865 6.712414 12.568608 11.198809
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.266692 13.224328 9.139152 4.141081 16.682776 25.743408 5.626680 3.520849 4.804698 15.193925 4.963297
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.792794 8.668090 8.409941 7.396849 2.666930 4.019134 10.326928 12.225524 15.534952
[[271]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.010211 52.007314 16.378233 18.047737 10.345271 4.609446 3.752157 26.396396 6.924687 12.646562 11.315223
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.258068 13.538116 9.169161 4.065169 14.949634 27.411924 5.755156 3.459834 4.744393 16.712325 4.671559
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.719122 8.938828 8.199834 7.544521 2.642310 4.345058 10.876410 11.698227 15.656798
[[272]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.040923 51.924182 16.571057 18.812957 10.828440 4.807145 3.817676 26.616104 7.044702 12.704603 11.500297
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.205320 13.026693 9.282130 3.930521 16.713156 27.524442 5.645646 3.518639 5.468955 15.089037 4.791334
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.718576 8.727969 7.884252 7.455539 2.614670 4.011802 10.552451 10.863320 15.502430
[[273]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.681761 51.927025 16.827827 18.545294 10.592704 4.779513 3.846831 26.539423 6.918588 12.782210 11.307723
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.109824 13.238363 9.611017 4.038965 16.973302 27.491071 5.591097 3.592267 4.843700 14.825327 4.920031
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.740283 8.473982 7.682765 7.423569 2.664080 4.021022 10.568024 11.516406 15.299909
[[274]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.560903 51.809256 16.550358 18.897813 10.779141 4.748317 3.740305 28.396591 7.043946 12.912145 11.498772
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.243241 12.976699 9.078876 4.047806 16.989805 27.877106 5.591040 3.421523 5.030956 15.017224 4.842070
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.705059 8.621184 7.610947 7.507672 2.867698 4.001331 11.030993 9.384359 14.788621
[[275]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.412668 51.929757 16.807812 18.572936 10.678346 5.043850 3.657495 28.635669 7.242518 12.917816 11.559992
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.308998 12.817090 9.351457 4.120247 16.889101 27.939245 5.785414 3.428411 4.866909 15.225202 4.746983
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.857516 8.271684 7.724593 7.200029 2.604205 3.801575 10.881872 9.449918 15.002775
[[276]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.712365 52.025759 16.812284 18.592900 10.807930 4.881042 3.592075 28.642881 6.993999 13.027836 11.652759
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.227500 12.612199 9.089933 3.999695 17.068365 27.731622 5.580211 3.357826 4.632580 15.169141 4.735748
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.715440 8.645054 7.987313 7.353750 2.875762 3.910385 10.642987 10.030329 15.107504
[[277]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.785638 51.936417 16.507787 18.740845 10.873884 4.818183 3.703433 28.600484 7.241036 12.695028 11.621033
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.648863 12.367095 9.062874 3.987528 16.804759 27.824925 5.675280 3.441549 5.329300 14.977901 4.843190
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.397812 8.984380 8.025895 7.524139 2.775883 4.106562 10.699927 9.516537 15.027186
[[278]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.439311 51.822193 16.889284 19.582323 10.731869 4.802918 3.672328 28.492128 6.777378 12.611592 11.149128
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.769857 12.291189 9.823472 4.091413 15.650074 26.174870 5.688278 3.542494 5.204185 16.553965 4.876571
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.829516 8.129128 7.616783 7.566843 2.754803 4.226992 10.663946 10.850206 15.768737
[[279]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.535897 51.908038 16.517371 19.348161 10.596393 4.571017 3.582697 28.903657 6.627593 12.647115 11.677513
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.908660 12.324168 9.592663 3.786777 16.783573 27.924821 5.586636 3.373418 5.415141 15.307139 4.738927
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.967028 8.234401 7.594739 7.629155 2.802158 4.150411 10.815707 9.635219 15.888479
[[280]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.345781 51.975362 16.984192 19.457500 10.537490 4.572365 3.358178 28.823303 6.691976 11.678694 12.654605
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.634576 11.890228 9.844558 4.061227 14.970176 25.336461 5.654660 3.668976 5.078265 15.611909 4.790009
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.643298 8.260520 7.802306 7.503135 2.787375 4.140291 10.284725 12.060871 15.962569
[[281]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.361956 52.424728 16.601224 18.833187 11.285018 4.631548 3.441427 28.917229 6.966071 11.230797 13.022853
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.338447 11.662731 9.543588 3.952470 14.800523 25.389775 5.031711 3.779068 5.501498 15.541726 4.824096
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.828426 8.481559 8.154159 7.305341 2.731443 3.836711 10.493250 12.048826 16.110425
[[282]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.399672 52.224010 17.315051 18.860844 10.975596 4.831371 3.530254 28.855851 6.924647 11.203494 13.057154
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.207834 12.061531 8.667757 3.900306 14.776505 25.329977 5.494388 3.735909 5.358357 15.485263 5.024651
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.043130 8.101305 8.042297 7.383097 2.891514 4.086513 10.564735 11.938217 16.262386
[[283]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.369988 52.712795 17.515319 19.038600 10.502075 4.850068 3.369133 29.563053 6.905134 11.219649 13.432045
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.558916 12.093368 9.037572 3.547631 14.252107 25.716855 5.294110 3.859763 5.859138 15.481756 5.964120
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.465732 7.931102 7.123525 7.276227 2.843276 3.891907 10.100460 11.598094 16.350010
[[284]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.416358 52.831005 16.889287 19.228356 9.717265 4.881266 3.288971 29.171883 7.351461 11.598551 13.422889
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.679089 12.216922 9.146641 4.192493 14.349008 25.506003 5.411172 3.723866 5.467223 15.586803 5.954095
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.836016 7.702056 6.631322 7.544249 2.713458 4.251424 9.879067 11.258470 17.283427
[[285]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.605791 52.597244 17.320441 19.256131 8.013349 4.789563 3.050142 28.847617 7.522893 11.720792 13.222508
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.446768 12.647976 9.157257 5.412345 14.845299 25.673535 6.907414 3.798307 4.827899 15.807623 7.024459
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.436382 7.597010 5.151074 7.508322 2.784856 4.255594 9.744104 11.516283 16.975354
[[286]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
47.082580 52.489875 17.246750 20.071227 8.021400 4.679540 3.194974 28.624296 7.507088 11.719256 13.363782
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.516328 12.323454 9.394283 5.363160 14.880485 25.656070 6.894677 3.788516 4.567719 15.776587 6.943195
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.283295 7.600170 4.987827 7.639030 2.849705 3.863945 9.550247 11.462743 17.323670
[[287]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.949570 52.217451 18.119677 19.836518 7.920004 4.999344 2.890316 28.872758 7.429249 11.941925 13.731897
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.059291 11.713483 9.915476 4.272027 14.668618 25.877730 5.479852 4.029727 4.731973 16.179370 8.035226
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.255323 7.621762 4.591210 7.591107 2.803858 4.154582 9.603934 11.423895 17.064716
[[288]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.783186 52.487374 17.884217 20.399098 7.919856 4.848976 3.130441 27.054193 7.602379 11.607480 13.747773
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.657405 12.022300 9.747986 5.399773 14.612459 25.754236 6.193776 3.822744 4.565749 16.054848 6.748267
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.012896 7.797893 5.183909 7.145294 2.827078 4.374695 9.472056 13.808156 16.715320
[[289]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.126054 52.707197 17.985953 20.126000 7.858924 4.842991 2.972975 26.975900 7.541859 11.536802 13.730814
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.442279 12.017282 9.993426 5.155729 14.667766 26.318510 6.563681 3.714639 4.406274 16.036843 7.020382
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.568860 7.584281 5.036923 7.443206 2.936670 4.157516 9.328657 13.810572 16.965083
[[290]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.031389 52.759543 17.952147 19.887610 8.132120 4.939191 3.125667 26.686207 7.825553 11.579195 13.265188
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.682877 11.906919 10.265512 5.446475 14.283669 25.983569 6.334801 3.666684 4.549851 16.851872 6.484241
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.556106 7.752754 6.511602 6.041393 3.072832 4.054860 9.385934 13.929873 17.004242
[[291]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.266861 52.818951 17.594514 19.996960 8.469371 4.721376 2.907329 27.271457 7.628825 11.502299 13.598357
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.992034 11.902331 10.046411 4.332051 14.358968 26.509109 6.576146 3.431488 4.370568 16.544659 6.721477
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.247460 8.863839 6.334443 5.999079 2.893942 4.337216 9.480784 13.844366 16.871095
[[292]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.474519 53.060621 17.341080 20.045524 8.174061 4.748989 2.906307 27.355444 7.492283 11.606474 13.920407
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.757009 11.961107 9.859276 4.339464 14.351699 26.488190 6.774945 3.246239 4.210427 16.796895 6.657760
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.426582 9.131246 6.314122 6.058884 2.970944 4.334107 9.375866 14.106564 16.801063
[[293]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.275230 53.072890 17.503524 19.664171 8.709533 4.833718 3.151016 26.843859 7.427549 11.718903 13.895240
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.694652 11.709475 9.761091 4.404164 14.340548 26.714171 6.554162 3.307969 4.251505 16.405023 7.031182
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.517438 9.289995 6.505267 5.894263 3.088736 4.130599 9.650178 13.992343 17.230310
[[294]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.337244 52.891588 17.544622 19.653049 8.568696 5.006944 3.079501 27.060730 7.615628 11.629549 13.837205
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.707159 11.876977 9.854805 4.122489 14.412799 26.844719 6.482539 3.490647 3.995584 16.651950 6.802008
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.685221 9.228423 6.382573 5.990264 3.088365 4.430892 9.628298 13.959661 17.025082
[[295]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.505348 53.129327 17.381049 19.783665 8.527753 5.265909 3.302324 27.467047 7.663615 11.538465 13.761035
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.744155 11.778827 9.716303 4.012845 14.353983 26.625300 6.682429 3.563414 4.686620 15.803585 6.695873
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.687404 9.311483 5.197035 7.389000 3.195259 4.062215 9.103011 14.006428 17.044129
[[296]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.680581 52.948441 17.415251 19.314497 8.635371 5.353057 3.279088 27.135139 7.496515 11.449454 14.393361
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.824693 12.135462 9.474710 4.316560 14.748097 24.361034 6.544649 3.096316 4.922832 15.594407 7.024163
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.697611 9.122136 5.001988 7.044406 3.377751 4.368458 9.078122 14.185358 17.344427
[[297]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.636674 53.159312 17.186185 19.524656 8.849099 5.067181 3.208396 26.885257 7.729447 11.916923 14.481557
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.243485 11.902008 9.875108 4.324026 15.607549 23.804289 6.395386 3.281507 5.043049 15.449034 6.936785
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.631716 9.228749 5.019416 7.039823 3.217157 4.349124 9.240227 14.040097 17.547301
[[298]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
48.891967 52.945314 17.405975 19.967083 8.430188 5.255116 3.211330 26.926383 7.358084 11.920756 14.496342
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.355914 11.772277 9.547315 4.564404 15.733083 24.436196 6.578650 3.279110 4.930345 16.010724 6.893722
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.799348 9.437557 6.101767 5.751448 3.098611 4.463518 9.008490 14.119734 17.379497
[[299]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.154572 52.091148 17.266296 19.730138 8.827424 5.173089 3.249833 26.811341 7.235651 11.719981 14.301258
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.522831 11.854734 10.199185 4.717735 16.019683 24.331039 7.037052 3.460218 4.953791 15.886601 7.006531
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.714485 9.496157 6.498570 5.791415 3.070454 4.571738 8.718542 13.884146 17.340205
[[300]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.341634 52.395890 17.198499 16.924287 8.326847 5.165286 3.334891 27.361238 7.375050 11.791722 14.356947
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.559668 11.690571 10.411572 4.350485 15.374770 24.674964 6.664090 4.003485 5.146791 15.873430 8.007093
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.938053 8.083422 6.862343 5.652988 3.045274 4.556667 10.981127 14.102927 17.488960
[[301]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.558680 51.828630 17.693245 16.790887 8.109976 5.033782 3.408105 26.706164 7.392924 12.050410 14.362038
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.531801 11.647025 9.501229 4.338535 15.661843 24.807912 6.470510 3.803937 5.231330 16.284941 7.941426
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.195254 7.981254 6.982529 6.431926 3.116735 4.700210 10.764121 14.368093 17.694585
[[302]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.870701 51.816088 17.624733 19.714789 8.122906 5.075688 3.399935 26.064616 7.367171 11.837306 14.673807
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.315960 11.828894 9.673109 4.269510 16.797494 24.402936 6.741036 3.967114 5.248464 16.107818 7.716510
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.262719 7.780734 6.726115 6.364220 3.143606 4.560920 8.613919 14.344647 17.382195
[[303]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.728393 51.714053 17.722554 19.854896 8.213760 5.056318 3.343203 26.330014 7.362477 12.113055 14.343797
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.347807 12.030977 10.058185 4.161190 16.732763 24.443382 6.681411 3.693917 5.231729 16.158264 7.952636
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.028415 7.710476 7.042939 6.340619 2.971121 4.928393 8.600620 14.206109 17.124566
[[304]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.249720 51.838516 17.729363 19.298060 9.472100 4.717223 3.461950 26.579286 7.261060 12.021192 14.470736
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.292984 11.951334 9.870831 4.316148 16.404156 24.088663 6.664764 3.721462 5.676371 16.519870 7.877080
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.907730 8.035904 6.949086 6.645678 2.994998 5.096761 8.599718 14.195398 15.728993
[[305]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.457007 51.764066 17.980009 19.333024 9.322147 4.730455 3.412451 26.758409 7.531621 11.708790 14.869940
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.364636 12.097327 10.037997 4.159573 16.684530 24.431759 6.542288 3.513891 5.805639 16.416981 7.947844
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.004739 8.292817 6.798774 6.426687 2.830439 4.550167 8.666491 13.774279 15.741889
[[306]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.854456 51.444252 18.026729 19.603237 9.172366 4.933675 3.403897 26.854012 7.431337 11.973815 14.539418
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.368442 12.080092 10.451580 4.200120 16.700512 24.415014 6.701754 3.549116 5.570731 16.463857 7.956146
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.096917 8.583756 6.885761 6.639258 2.753415 3.754616 8.424147 13.752210 15.520099
[[307]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.706650 51.823097 17.997560 19.176928 9.364525 5.079276 3.322893 26.554798 7.331317 13.761373 15.098355
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.418132 12.087315 10.525623 4.189694 17.160067 24.604009 6.718691 3.554654 5.905464 16.169307 7.891343
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.279807 8.579171 7.351251 6.333806 2.635532 3.715898 8.516775 11.554993 15.033184
[[308]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.815714 51.661602 17.932677 19.327752 9.345057 4.902766 3.388876 26.266677 7.597414 14.119024 14.991078
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.512812 12.064056 10.116175 4.152001 16.691467 24.322466 6.578289 3.743973 5.787056 16.341829 7.903723
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.666920 8.350837 7.287159 6.457399 2.849089 3.758096 8.700670 11.508483 15.274109
[[309]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.481868 52.100364 17.628103 19.095190 9.244691 4.890252 3.189930 25.865136 7.894168 13.848705 14.968000
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.458589 12.262587 9.978194 4.073028 17.124226 24.333807 6.599449 3.646611 5.884170 16.434562 7.994558
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.937031 8.095118 7.111773 6.719637 2.867766 4.250569 8.766999 11.618538 15.394923
[[310]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.741352 51.827280 18.068922 18.915264 9.817440 4.917221 3.405066 23.137603 7.878730 13.739871 14.991740
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.588789 12.478318 9.884967 4.023749 17.250673 24.445540 6.884221 3.218168 5.881056 16.285258 7.215991
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.908445 8.998045 7.203397 6.545400 2.842024 4.228320 9.088189 11.050124 15.493871
[[311]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.835975 52.097604 18.111035 18.965150 9.414551 4.929160 3.397340 23.672071 7.909804 11.716175 14.503120
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.626358 12.245478 9.975055 4.200875 17.301110 24.961690 6.826683 3.546813 5.338727 16.270241 7.993629
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.726245 8.205337 7.272169 6.210794 2.923084 4.375845 8.928176 13.170366 15.554649
[[312]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.116452 51.968795 18.182269 19.368920 9.294320 4.907017 3.356741 23.448192 8.093591 11.553678 14.849854
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.862581 12.044133 10.143488 3.917009 17.514002 24.497947 7.010647 3.613223 5.626658 16.437330 8.123181
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.896956 8.320976 7.228285 6.274073 2.905846 4.219657 8.434018 13.333622 15.709712
[[313]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.930346 51.804352 18.872779 18.970065 9.257763 4.757008 3.352290 25.610894 7.978728 11.534198 15.016562
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.677426 12.052848 10.329945 4.152432 16.946132 22.528759 6.849179 3.589736 5.603936 16.758360 7.958475
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.772175 8.139132 6.986693 6.710610 2.909564 3.917116 8.427420 13.465722 15.490883
[[314]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.648893 51.499009 18.927315 16.450054 9.349623 4.844090 3.356065 25.697881 7.768227 11.556354 14.978401
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.598063 11.708060 10.194455 4.195467 16.341031 23.399147 6.721416 3.486457 5.677210 16.350060 8.183441
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.849787 8.298113 7.046537 6.484044 2.751622 3.917804 10.908018 13.696544 15.628638
[[315]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
52.104276 51.464389 18.719798 19.221758 9.237986 5.144328 3.201677 25.886958 7.762338 11.450285 14.718207
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.689780 12.301478 10.311375 3.987498 16.150318 22.971893 6.969947 3.367595 5.640230 16.531834 7.813051
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.666230 8.360925 6.890073 6.453939 2.805188 3.912780 8.736301 13.674632 15.587294
[[316]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
52.248905 51.805125 18.631723 21.223693 9.195432 5.169166 3.128522 26.031161 7.745279 11.096881 14.581744
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.687491 12.347891 10.304496 3.923728 16.111978 21.283319 6.763742 3.387547 5.586579 16.552138 8.042134
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.692896 8.474928 6.842190 6.354859 2.768111 3.841752 8.643889 13.843148 15.734990
[[317]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
52.531753 52.064377 19.041213 18.662848 9.093266 5.191447 2.961987 26.646395 7.403018 10.556245 14.485153
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.784328 12.015778 10.330051 4.360762 16.066564 20.553539 6.768746 3.484551 5.302044 16.427580 8.098373
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.498008 8.618439 6.473089 6.413325 2.689049 3.887243 12.736751 13.755282 15.760733
[[318]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
52.851696 51.939276 19.069397 20.885292 9.203213 5.125444 2.952999 26.242414 7.438701 11.313961 14.656630
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.050810 12.288651 9.911532 4.192717 16.157488 21.001078 6.591391 3.740817 4.868777 16.345850 8.096716
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.276858 8.197911 6.644729 6.630646 2.545962 3.547651 10.259722 14.125981 15.685551
[[319]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
52.675189 52.090093 19.205755 21.087675 9.192011 5.050845 3.166434 25.963550 7.392313 11.425504 14.828464
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.201011 12.367513 10.019517 3.968037 16.164362 21.044392 6.704845 3.531137 5.047257 16.270252 7.911625
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.143696 8.161619 6.671799 6.435794 3.022871 3.370332 9.781059 14.043765 16.056695
[[320]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
52.889368 52.583646 19.044229 20.801894 9.221368 5.034549 3.163126 26.174892 7.311613 11.364465 14.699354
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.097464 12.247140 10.145029 4.245047 16.043365 20.614141 6.454119 3.695664 5.399643 16.272027 8.156597
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.314998 8.058542 6.723420 6.486895 2.797075 3.260442 9.935136 14.081880 15.798819
[[321]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
52.925585 52.448374 18.867876 20.614727 8.952175 5.310160 2.917385 26.350360 7.423579 11.369789 14.968829
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.920797 12.326399 10.066306 4.253350 16.062771 20.836544 6.519256 3.716977 5.554652 16.111901 7.975287
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.086081 8.208721 6.745972 6.585453 2.868018 3.388727 9.978942 14.137801 15.793868
[[322]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
52.211336 51.684234 19.041770 20.753733 8.910866 4.976819 3.196493 25.924443 7.479248 11.705897 14.706275
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.194219 12.261078 10.221386 4.447061 16.016638 21.370469 6.622321 3.809366 5.423181 16.102229 7.890386
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.220048 8.296176 6.655101 6.833794 3.035379 3.397861 9.939652 14.258344 15.879672
[[323]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
52.631626 52.729223 18.646703 20.715572 9.054420 4.967677 3.124460 25.764058 7.293042 11.858275 14.619868
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.555407 11.758533 10.509604 4.434578 15.989685 20.560219 6.497984 3.711620 5.490002 15.941292 8.121675
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.267254 8.306601 6.587263 7.027443 3.019308 3.318157 9.934949 14.359848 16.130469
[[324]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.334165 53.027439 19.319023 21.187297 8.975277 4.872760 3.413941 25.602655 7.251479 11.831121 14.267606
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.519211 11.538989 10.241062 4.440190 15.852451 20.414539 6.459822 3.744124 5.413980 15.984730 8.236426
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.163439 8.249810 6.649201 7.353827 2.919482 3.157694 9.613591 14.673380 14.323383
[[325]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.481154 53.136224 19.077004 21.074896 8.984666 5.077910 3.260558 25.493614 6.898992 12.054842 14.588498
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.194758 11.728776 10.183039 4.276727 15.770608 20.832270 6.265034 3.805864 5.518389 16.536366 8.330278
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.217927 8.248479 6.874339 7.234585 3.080192 3.105995 9.664618 14.553867 14.113780
[[326]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.803958 52.242410 19.840077 20.922101 8.979601 5.057508 3.541978 25.402161 6.998790 14.137003 14.846397
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.055224 11.840774 9.854285 4.429744 15.889871 19.387169 4.831102 3.967310 5.531069 16.017773 8.478830
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.308625 7.967833 9.316351 6.832097 2.987013 3.463524 9.827816 12.658752 14.405878
[[327]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.693486 52.825135 19.966584 20.830837 9.237856 4.920773 3.430753 25.562005 6.824644 14.025933 14.622550
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.105282 11.740745 10.167663 4.028530 16.002278 19.495179 6.130835 3.653230 5.361085 15.608247 8.568219
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.427830 8.068988 7.927663 6.896689 3.120851 3.674107 9.941749 13.029297 14.243243
[[328]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
55.074264 52.498487 19.883573 20.751131 9.280443 4.894382 3.431372 25.637088 6.970244 13.740363 14.524595
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.128824 11.700215 10.113877 4.053020 15.811661 19.860329 4.592292 3.652673 5.246931 15.681185 8.642389
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.232359 8.105989 9.849330 6.988707 3.160388 3.652626 9.954656 13.150134 13.965973
[[329]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
55.172149 52.820088 19.814178 20.389400 9.131034 4.948519 3.456857 25.665174 7.178750 13.835047 14.667195
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.573317 11.868801 10.011260 4.281455 15.768846 20.053293 6.073098 3.633553 5.292723 15.240437 8.622009
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.059353 8.175586 8.348336 7.117733 3.088807 3.618697 9.943101 13.471462 13.405678
[[330]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.918388 53.210888 19.099304 20.021188 9.232133 4.427956 3.581975 25.868230 6.839113 13.307658 14.912158
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.424275 12.034708 10.627835 4.582390 15.968838 20.771222 6.321495 3.730763 5.457710 14.862317 8.707360
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.347902 8.423824 8.565940 7.163250 3.019921 3.373987 10.145938 13.026092 13.920945
[[331]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.744909 53.381342 21.251534 20.205706 9.440386 4.748628 3.639476 23.654381 7.151577 13.613425 15.158637
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.322040 12.272035 10.373105 4.371069 16.181707 20.739563 6.243121 3.758942 5.424563 15.182399 7.998890
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.373482 8.265325 8.186778 7.209658 2.982039 3.310125 10.202157 12.850558 14.124444
[[332]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.891003 53.506968 20.701718 20.034532 9.253992 4.714212 3.408707 23.504773 7.187568 13.638137 15.407341
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.466526 12.185213 10.679146 4.597029 16.360278 20.714694 6.171659 3.763173 5.858334 15.055175 8.205546
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.408216 8.170647 8.370144 7.234271 2.801500 3.432169 10.263061 12.826463 13.750158
[[333]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.697585 53.423512 20.502880 20.112153 9.517205 4.836449 3.311524 23.682518 7.535616 13.685957 15.117199
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.555803 12.048766 10.502666 4.414619 16.148870 20.692300 6.357760 3.813876 5.727034 15.101391 8.338229
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.472178 7.939561 8.382983 6.994081 2.867953 3.898259 10.415796 13.330970 13.230163
[[334]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.548989 53.253248 18.428705 20.061492 9.000002 4.889550 3.321938 23.590177 7.534174 13.821802 15.110081
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.365017 12.248254 10.124961 4.313664 18.578972 21.285400 6.270645 3.771298 5.941754 15.072184 8.313981
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.443549 8.285565 8.353541 7.013953 2.673612 4.342615 10.059562 13.147489 13.493652
[[335]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.886810 52.618405 18.106259 20.038721 9.422284 5.124130 3.379581 23.364778 7.319841 14.087794 15.274942
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.420316 12.133683 10.504859 4.093226 18.423348 21.225994 4.778538 3.907175 6.173493 15.168570 8.243782
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.508877 8.273016 9.893426 7.082194 2.655113 3.934223 10.139141 13.559150 13.096988
[[336]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.876954 52.613369 19.075249 21.278866 8.970613 5.104125 3.544973 22.573038 7.348686 13.681909 15.147447
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.464996 12.450837 10.751060 4.015407 18.682699 21.174886 4.870607 3.615213 5.837319 14.058593 8.379345
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.389077 7.952829 9.838351 7.139724 2.879057 4.009344 10.638540 13.463903 12.861756
[[337]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.701646 52.844949 19.051151 21.602151 8.932053 5.064681 3.469767 22.908926 7.554213 13.766256 15.095228
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.340791 12.580202 10.758988 3.899721 18.466290 20.884153 4.859049 3.653011 5.724724 14.192248 8.398849
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.715019 7.697225 10.023535 7.002633 2.744928 4.122957 10.486824 13.470920 13.000878
[[338]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.536808 52.905690 19.299254 22.227222 9.069015 4.989094 3.266411 22.738494 7.515035 13.629374 15.235604
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.372156 12.276187 10.833228 3.917713 18.681735 20.763275 4.967456 3.924220 5.582656 13.948633 8.469634
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.733386 6.204761 11.620334 7.219914 2.599404 3.755404 10.660706 13.479459 12.862432
[[339]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.909470 53.383801 19.007512 22.136405 9.186204 4.929205 3.464821 23.044966 7.247311 13.399008 15.155912
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.091634 12.312132 10.966285 4.076102 18.578721 20.880266 4.996382 3.753534 5.544898 13.545426 8.510924
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.718889 6.504342 11.635597 6.760359 2.554883 3.662917 10.507234 13.642204 13.200866
[[340]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.530581 53.017676 19.033471 22.320445 9.017144 5.106061 3.369399 23.290564 7.651747 12.933772 15.369705
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.112567 12.214559 10.565452 4.146634 18.761661 21.097180 5.047757 3.678376 5.522226 13.415898 8.181577
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.737315 6.307210 11.783422 7.008834 2.710623 3.907439 10.064702 13.719028 13.531245
[[341]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.468874 53.009053 20.818598 22.079276 9.060282 5.224220 3.471919 23.410726 7.613838 13.530344 15.798146
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.779566 12.033117 10.609235 4.027164 17.019075 21.131970 5.263616 3.605411 5.472094 13.487054 8.374100
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.875877 6.376676 11.267400 7.023865 2.697434 3.648061 10.015090 13.154891 13.778757
[[342]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.576788 52.629924 20.798660 22.134396 9.017564 5.130986 3.330043 23.458782 7.667247 13.485867 16.091697
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.042689 11.608314 10.733519 4.396141 16.723382 21.291087 5.270554 3.608961 5.367198 13.536271 8.352448
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.645869 6.356613 11.112875 7.276631 2.810325 3.665009 10.223343 13.092443 13.564478
[[343]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.108312 52.924940 18.971674 22.461860 9.014659 4.945382 3.456570 25.161811 7.528112 13.224251 15.686297
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.267018 11.548062 10.947427 4.205886 16.876576 21.066274 5.249223 3.722307 5.363906 13.616819 8.422716
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.785617 7.940502 10.012079 6.856166 2.896256 3.580698 9.894050 13.496086 13.037880
[[344]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.098327 52.575259 18.661729 21.792144 9.083796 5.215770 3.502375 25.113746 7.432833 13.003430 15.589015
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.341872 12.098734 11.323207 4.668827 17.305012 20.550116 5.017562 3.969961 5.473090 13.174347 8.441541
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.520202 7.986526 10.004535 6.991746 2.864079 4.033846 9.808142 13.398086 13.028432
[[345]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.053799 52.046323 18.080736 21.347868 9.182971 5.104287 3.341861 26.052098 9.253329 14.137995 15.202529
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.531220 11.762130 10.735555 4.649821 17.259123 20.952029 4.820209 3.926561 5.409305 13.118938 8.709526
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.285644 6.885071 9.896340 7.051369 2.738475 3.918037 9.955394 13.817157 12.920926
[[346]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.344027 52.326396 18.266525 21.620621 9.434741 4.983676 3.170120 25.667246 9.331099 14.439973 15.521262
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.204089 11.270466 10.668751 4.712953 17.259331 21.013746 4.980430 4.484214 5.193659 13.109911 8.408610
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.157193 6.639846 9.841217 6.962209 2.857948 3.813395 10.099794 14.164746 12.180525
[[347]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.848237 52.293793 16.665176 21.360772 9.497618 5.042361 3.241121 24.922596 9.312522 14.638059 15.277028
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.432660 11.159993 11.058026 4.906808 19.384930 22.573604 4.841537 4.444905 5.305302 13.235124 8.644393
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.284672 6.425465 10.453994 6.785752 2.930992 3.347100 10.066552 13.620519 12.139652
[[348]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.921620 52.232305 18.489214 21.376948 9.543136 3.826816 2.945092 26.134884 10.533388 15.036888 15.104047
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.507936 11.197549 10.939035 4.677724 17.683156 22.219330 6.834749 4.371028 5.240480 13.081438 10.349940
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.235723 6.561935 10.177622 5.541686 2.725270 2.931266 10.159920 14.623593 10.601668
[[349]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.244435 52.396693 19.042310 21.254449 9.596750 3.734893 2.990507 26.701162 10.309124 14.897683 15.177635
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.606419 11.024577 11.023917 4.815019 17.422026 22.130819 7.213518 4.469102 5.256402 12.990465 9.714536
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.434714 6.468236 10.110953 5.209285 2.603764 3.017806 10.125873 14.251303 10.724417
[[350]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.314768 52.434741 19.062046 21.203346 9.679236 4.987997 3.326250 26.768034 7.407948 14.632200 15.062634
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.384661 11.448525 11.064036 4.745504 17.411540 21.653004 6.862551 4.281602 4.791895 13.146219 10.195455
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.704609 6.679315 10.083075 5.683976 2.624644 3.052838 10.090897 13.877200 10.970245
[[351]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.190251 53.125871 19.009172 21.044044 9.352242 3.857073 3.289563 26.536715 8.931173 14.369182 15.144523
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.019202 11.068388 11.251858 4.543953 17.319845 21.543376 7.068527 4.027326 4.851521 13.269666 10.327900
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.212466 6.397379 9.719275 5.888305 2.991943 3.033835 10.122248 14.515579 10.946827
[[352]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.226274 52.404212 19.053565 21.046280 8.865530 3.788373 3.089435 26.933851 9.336891 13.987428 15.183262
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.216954 11.299805 10.208784 4.460014 17.339768 21.487474 7.512419 4.241259 4.778748 13.630436 12.082420
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.593597 6.598100 11.359475 5.475724 2.954476 2.860913 10.514288 13.871151 10.137575
[[353]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
55.169378 52.235299 18.875002 21.262308 8.719319 3.838374 3.383256 26.884262 9.133410 14.353540 15.314072
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.189119 10.568784 10.230897 4.562249 16.657703 21.642033 7.481833 3.775536 4.671800 13.743466 11.758684
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.471263 6.766882 9.846306 5.183811 2.590718 2.878418 10.141394 14.870805 10.491213
[[354]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
55.131096 51.960934 18.903287 21.317567 8.992952 3.845735 3.423357 27.127265 9.070972 14.254151 15.573375
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.922496 10.664875 9.623390 6.498842 16.146460 21.835369 7.663930 4.419514 4.461615 12.049605 11.616479
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.518817 6.387465 9.382305 5.847425 2.708130 2.869831 10.630800 13.849888 10.573081
[[355]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
55.396024 52.220045 18.741467 21.018931 8.692231 3.620044 3.416385 26.991054 8.855111 14.383842 15.252629
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.084862 10.961302 9.682935 4.865951 15.966017 21.727463 7.710216 4.262438 4.371772 13.851338 10.269261
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.950927 6.581550 10.121741 5.641801 2.813717 3.620045 10.106967 14.348161 10.792707
[[356]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.551521 52.407546 18.566629 21.269142 9.165699 3.836875 3.422759 27.318406 8.687006 14.092568 15.263879
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.041054 10.712113 9.629173 6.508256 16.218270 21.999730 7.512386 4.430887 4.570919 11.787268 11.369344
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.447758 6.622719 10.170477 5.618235 2.743957 3.139169 10.411798 14.344940 10.399525
[[357]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.734726 52.543558 18.652187 21.384333 8.973620 3.880259 3.241012 27.133414 9.113677 13.525193 14.831761
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.428349 10.655954 9.924664 6.188630 16.229418 22.681091 7.299915 4.382141 4.779596 11.181341 11.473620
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.350499 6.656602 12.076226 5.764472 2.831998 3.074433 10.723459 13.839435 10.608020
[[358]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.587036 52.536761 18.466908 21.396851 7.468270 3.894507 3.247006 27.001618 8.870089 13.606897 15.580628
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.253341 11.118119 9.851720 6.608639 16.309430 22.180508 7.242840 4.453492 4.368730 11.014716 11.406441
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.443398 6.498462 13.508603 5.912150 2.750325 2.931575 11.135229 13.703719 10.343736
[[359]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.594123 52.250818 19.244413 21.029509 9.712466 5.134762 3.131252 26.887209 7.605162 13.910804 15.422112
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.308101 11.233400 10.259499 4.691048 16.470991 22.309059 7.097505 4.393776 4.310889 11.059078 11.574867
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.722189 6.045083 13.479614 5.117778 2.914718 2.932835 10.640272 14.039755 10.160548
[[360]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.787288 52.152215 19.387365 21.004491 9.328689 5.251762 3.204845 26.883919 7.429836 13.831500 15.388572
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.572472 11.219623 10.495700 4.538929 16.431326 19.998771 7.404974 4.300043 4.447777 11.046244 11.572101
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.336852 6.126293 13.566164 5.386052 2.970567 3.145931 10.656403 15.941966 9.954554
[[361]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.721173 52.120286 19.417421 21.082846 9.333067 5.041530 3.147234 27.201562 7.405689 13.542750 15.848035
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.537212 11.095383 10.554044 4.315543 16.206848 20.071999 7.193202 4.288608 4.495754 11.163418 11.554654
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.640764 6.075388 13.693538 5.323334 2.914007 3.196933 10.760522 16.121023 9.864560
[[362]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.618982 52.671466 19.431087 21.395586 9.049004 4.828758 3.344040 24.646812 7.217151 16.105606 15.332123
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.486468 11.180041 7.397220 4.167091 16.195549 20.312954 7.813273 4.161308 4.481062 11.010262 11.832938
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.681465 6.311196 13.659077 4.952061 2.775886 3.198103 13.788943 15.860444 9.783347
[[363]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.605688 52.323805 19.518549 21.401446 9.109574 5.186091 3.373310 24.580882 7.181333 16.549429 15.320078
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.591478 10.582142 7.776207 4.132413 16.735421 20.241886 7.541185 3.917384 4.271411 10.917457 10.660752
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.408387 6.531282 14.257376 4.870863 2.902029 3.305998 13.797352 15.681722 10.625416
[[364]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.525327 52.210964 19.324671 21.053592 9.584635 5.287298 3.431777 24.319904 7.536975 16.452051 15.356811
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.600395 10.499533 7.734736 3.999274 16.816527 20.424540 7.534036 3.948068 4.332090 11.310853 10.621547
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.205700 6.680956 14.000676 4.728585 2.771986 3.339372 13.800688 15.804090 10.621877
[[365]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.444507 52.509313 19.444083 21.127547 9.347054 5.305818 3.280541 23.516791 7.773036 16.840701 15.367665
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.259319 10.805485 7.428534 4.064260 16.463353 20.509309 7.073387 4.187018 4.226627 11.257303 10.620510
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.139347 6.602748 12.402412 4.871223 2.996857 3.633946 14.064173 15.880204 10.330491
[[366]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.958975 53.069119 19.593461 21.428914 8.979659 5.100459 3.280488 23.457505 7.833837 16.745695 15.582048
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.124784 10.901703 7.233461 3.968658 16.485531 20.232827 7.512997 3.983368 4.177010 11.202960 10.550298
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.977033 6.784043 12.504070 5.072883 2.945179 3.484920 13.944876 15.854892 10.180773
[[367]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.688725 53.139243 19.119886 19.149564 9.232624 5.277948 3.200041 23.696765 7.605775 17.073483 15.517895
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.002536 10.961883 7.374892 3.791964 16.370417 22.493347 9.367651 4.164005 4.417962 11.488744 10.626359
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.302482 6.648664 12.469930 4.958811 2.792443 3.402221 13.921505 13.636510 10.256119
[[368]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.912393 52.728347 19.105141 18.874283 8.962543 5.282950 3.237860 23.771064 7.535613 16.752212 16.076250
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.036795 11.007816 7.090769 3.762722 16.338487 20.484226 9.418109 3.958021 4.370526 11.598344 10.585045
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.398036 6.858730 12.392725 5.135356 2.941812 3.424623 14.060759 15.933278 10.041310
[[369]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
55.113840 52.534186 19.211093 19.591836 8.916046 5.198298 3.175472 22.998100 7.535865 16.816310 16.067042
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.485452 10.802989 7.395470 3.753345 16.672966 21.014419 9.647557 3.908876 4.302462 11.303644 10.663358
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.518821 6.451198 12.474150 5.062933 2.726110 3.556837 13.546033 15.620621 9.983951
[[370]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.532078 52.664786 18.528265 19.502910 9.307151 5.397695 3.158550 23.831836 7.602978 19.366498 13.710016
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.708995 10.177143 7.026052 3.656185 16.578016 20.658574 9.694721 3.780640 4.597234 11.445435 10.676356
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.557533 6.046339 12.208931 5.326813 2.791244 3.478187 13.586567 15.899964 10.493498
[[371]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.601629 52.621301 18.148864 19.616336 9.292073 5.518197 3.336201 23.983508 7.528799 19.215393 13.545038
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.416739 10.324179 7.003827 3.459871 16.948825 20.705946 9.679590 3.753393 4.800029 11.241984 10.900647
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.471873 6.233975 11.896042 5.383942 2.708916 3.670684 13.795052 15.934062 10.277859
[[372]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.532993 52.727435 18.794739 19.545113 8.837276 5.469699 3.455699 23.800911 7.763265 19.282713 13.614045
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.299315 10.764838 7.152198 3.498194 16.650740 20.822362 9.672448 3.787438 4.388140 11.328423 10.679504
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.510815 6.116552 11.697508 5.355968 2.813093 3.777606 13.605413 15.777091 10.343298
[[373]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.493820 52.442022 18.886041 19.022366 9.295391 5.576857 3.480347 23.877682 7.720407 17.553295 16.197346
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.291965 10.269170 7.133108 3.883914 16.666360 20.702368 9.398788 3.877883 4.424358 11.208254 11.645759
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.774949 5.873253 11.814373 5.521623 2.921266 3.412735 13.548394 15.549198 9.235760
[[374]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.621181 52.873152 18.681493 20.295991 8.068135 5.543934 3.408985 23.606693 8.036125 19.432153 13.974154
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.366673 9.495324 7.171018 3.609795 17.608356 22.180328 9.635120 3.794524 4.373645 10.964850 11.530064
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.454618 5.802645 11.893297 5.615192 2.660767 3.387614 11.935319 15.867664 9.668344
[[375]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.568124 53.166055 17.915238 20.132441 8.538202 5.290969 3.215507 23.562609 7.812845 19.261862 14.168721
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.470401 9.648763 7.198778 3.842779 17.582483 22.571118 9.463871 3.640661 4.495028 10.805100 11.732607
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.372654 6.179311 12.206865 5.699252 2.813645 3.157344 11.687463 16.354610 9.191602
[[376]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.796731 52.939576 19.016432 20.194932 7.905766 5.653780 3.429196 23.418592 7.773473 19.332966 13.901326
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.379551 10.177510 7.352471 3.390379 17.314998 22.402170 9.407451 3.788085 4.416202 10.506395 11.927320
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.287373 6.316202 12.315347 5.050848 2.705965 3.203292 12.119953 16.207149 9.381269
[[377]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
55.401566 52.744675 18.972083 19.793790 7.818327 5.589021 3.116297 23.710870 7.631820 19.417363 13.967705
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.316895 10.024576 7.469468 3.350366 17.328735 22.618504 9.599007 3.601346 4.613656 10.720170 11.599561
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.420467 6.094825 12.076809 5.054076 2.791166 3.293310 11.942745 16.197963 9.782483
[[378]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.848033 52.624168 18.229155 18.551695 9.242412 5.581021 3.411612 23.648054 8.316723 19.413293 13.722036
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.115574 10.188556 7.312230 3.375396 16.978239 24.658018 9.877050 3.827471 4.736989 10.879431 11.394982
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.475250 5.609308 12.231214 5.705652 3.024193 3.292505 11.796474 14.021956 9.572978
[[379]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.518758 52.982516 18.258688 18.813479 9.079966 5.790216 3.467887 23.425543 8.272325 19.411806 13.529044
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.154662 10.369834 7.155117 3.504915 16.069233 25.338301 10.083436 3.654905 4.623031 10.755352 11.814541
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.745096 5.719828 12.260763 5.593252 2.795642 3.403603 11.849937 14.293670 9.062271
[[380]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.531931 52.934273 18.111296 18.581847 7.911162 3.785819 3.405588 23.528798 7.887845 17.385956 15.822578
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.449243 10.413374 7.035715 4.262405 16.662679 25.210247 11.510100 3.684221 5.170138 10.850347 11.726238
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.258922 5.798033 12.221526 5.455982 2.865425 3.421955 11.459150 14.618025 8.896101
[[381]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.405521 52.969777 17.906083 18.414318 7.855181 5.428273 3.431338 22.988581 7.898792 18.103353 15.835526
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.107083 10.284628 7.149340 4.078421 17.184025 25.268354 9.735971 3.929816 5.286383 10.870647 11.900907
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.964976 6.377767 12.255605 5.070633 2.780510 3.211210 11.656280 14.452386 8.631333
[[382]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.153906 53.286005 18.431006 18.269105 7.966064 5.329509 3.513265 23.020164 8.201429 17.373897 16.002386
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.211784 10.360346 7.142966 3.608547 17.253814 25.229353 9.568517 4.055430 5.096315 10.741053 11.834174
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.066022 6.056885 12.322844 5.389736 2.866103 3.004645 12.200866 14.239662 8.551464
[[383]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.535993 53.091538 18.575396 18.320016 10.814527 5.068516 3.286088 23.165164 8.136608 19.467363 14.501709
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.285008 10.359039 7.358729 3.681835 17.011866 25.190639 9.705278 3.694076 5.055767 10.490188 9.147439
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.868600 6.074428 11.829312 5.407686 2.899872 3.314662 11.797831 14.233211 8.972503
[[384]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.025887 53.086694 18.523938 18.528867 11.099819 5.061914 3.340859 22.861892 8.224645 19.680247 14.168475
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.210814 11.142809 7.311564 3.174143 16.439217 26.766595 9.433589 3.586199 4.841091 10.648849 9.111282
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.736435 5.846147 10.199196 5.322013 2.929531 3.366518 12.199674 15.112363 9.074332
[[385]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.156582 53.344197 18.441433 19.082465 10.283795 3.738813 3.385475 22.581110 8.336082 19.550444 14.064181
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.319666 10.625095 7.374234 3.243765 16.523735 25.067557 10.695048 3.801386 4.871771 10.679727 8.945851
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.666356 5.912511 9.949034 5.716150 2.861371 3.305611 12.224715 15.307247 10.863335
[[386]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.230207 52.789007 18.487068 19.048600 10.117729 3.785554 3.603293 23.070889 8.391061 19.189865 14.389588
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.433362 10.745808 7.242638 3.405482 16.985361 25.046645 10.753427 3.523413 4.606829 9.719044 8.944597
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.728502 5.856114 10.097546 5.798054 2.877875 3.433362 12.333012 14.885548 11.012730
[[387]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.418808 52.495603 18.298971 19.221131 9.844186 3.623122 3.464257 23.032840 8.252695 19.541648 13.699513
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.392521 10.507304 7.601587 3.801323 16.526990 24.168117 10.461751 3.597297 4.973992 10.291875 9.069700
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.665531 5.573642 9.731243 5.079509 2.996880 3.887351 11.964198 17.366020 10.558815
[[388]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.391024 52.728285 18.992790 19.081208 10.432131 3.720341 3.235896 22.994430 8.176828 18.885271 13.112935
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.371778 10.725023 7.414417 3.580961 14.475940 24.508571 10.454994 3.694383 4.530995 12.611070 9.246795
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.674113 5.524501 9.975667 4.315697 3.005534 3.527963 12.304987 17.045972 11.056128
[[389]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.924725 53.067308 19.376109 19.304669 10.269334 3.705566 3.277002 23.039785 8.338345 18.470581 13.256017
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.454445 10.496699 7.851609 3.423192 14.696715 24.244418 10.501000 3.785734 4.595129 12.339457 9.095014
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.743272 5.746481 9.847121 4.286704 3.106246 3.676840 12.114342 16.913083 10.538411
[[390]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.701455 53.152427 18.855075 18.410104 11.488500 3.852221 3.141604 22.620918 8.335171 18.264684 13.839329
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.635834 10.433414 7.780406 3.789997 14.386137 22.701100 10.585641 3.655496 4.851663 12.250120 9.131043
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.864877 5.934977 11.282690 4.418465 3.029456 3.539173 11.893920 17.280231 10.328308
[[391]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.759089 52.583216 16.212301 21.031730 11.746800 3.837160 3.403296 22.167254 8.230382 18.998435 13.711763
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.759126 10.296023 7.389992 3.845162 14.682045 22.499269 10.734027 3.397419 4.622751 12.196229 9.155134
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.802832 5.980872 11.654101 4.313505 2.754619 3.472563 12.062075 17.167931 10.232326
[[392]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.484700 52.625979 16.592098 21.755696 10.196231 3.740416 3.451163 21.959829 8.229622 18.870707 13.158125
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.470150 10.393286 7.537369 3.830248 15.017195 23.900812 10.389759 3.729228 4.798127 12.679200 9.115313
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.854878 5.530814 9.670553 4.356579 2.714438 3.470453 12.174893 17.014179 10.630618
[[393]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.193761 52.472229 16.456810 21.360578 10.536100 4.113652 3.398915 21.968681 8.552440 18.773063 14.038262
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.262127 9.938654 7.540829 3.534086 16.864942 22.679047 10.527007 3.750042 4.976877 10.972390 8.961666
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.083754 5.659441 10.819875 4.036336 2.621207 3.548212 12.164842 16.762848 10.578339
[[394]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.057811 52.736182 16.673606 21.554957 10.546841 3.929282 3.336538 22.204666 8.607551 18.714950 13.619824
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.223639 9.715627 7.384355 3.429690 16.124934 22.772390 10.611543 3.935065 5.156266 10.812637 8.923740
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.859554 5.695530 10.943445 3.931414 2.711567 3.692171 12.276089 17.048337 10.422653
[[395]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.790553 53.032975 16.513650 21.600183 10.577039 3.666190 3.367465 23.178247 8.133930 15.892094 13.204966
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.243412 9.926081 7.375726 3.303368 14.301237 25.202460 10.374040 3.767128 4.563472 12.967491 8.593582
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.459411 5.330809 11.200576 4.109082 2.884778 3.697909 12.147565 15.381395 10.423183
[[396]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.845899 52.475192 16.251069 21.440081 10.332298 3.914204 3.329671 23.278635 8.058913 15.830751 12.529377
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.249168 9.978316 7.359507 3.671935 14.732722 26.655558 10.363872 3.450720 4.993842 13.071833 8.476370
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.271456 5.652338 9.881770 4.138308 2.960533 3.542337 11.610508 15.535516 10.056446
[[397]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.784960 52.143002 16.553161 19.979557 11.717756 3.929591 3.373008 23.407984 7.836762 16.333995 12.244320
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.239006 9.998097 7.303727 3.627551 14.604011 27.288208 10.430432 3.241320 4.800392 13.045696 8.580299
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.180044 5.540914 10.135036 3.990974 3.004535 3.760711 11.498554 15.422614 9.456706
[[398]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.460285 51.641489 16.594463 20.639942 11.890524 3.776645 3.211715 23.478681 7.862192 16.069752 12.477927
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.367340 10.267471 7.299354 3.754295 14.313837 27.347218 13.234881 3.411214 4.950599 12.811341 8.356102
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.189214 5.492088 9.682817 3.987593 3.045447 3.665467 11.708930 15.696337 9.592634
[[399]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.100493 51.752136 16.824349 20.490419 11.973810 3.757747 3.415639 23.389302 7.920483 16.047293 12.314551
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.751502 10.217482 7.286291 3.677884 14.632015 26.985044 13.208775 3.561434 5.021106 12.948811 8.385298
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.984397 5.258656 9.689486 4.118411 3.031904 3.546144 11.738196 15.293850 9.670723
[[400]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.311388 51.624467 15.845087 20.263771 11.980566 3.790897 3.207574 23.240027 7.362468 15.968985 12.436936
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.613091 9.029758 7.592335 3.401274 14.627873 25.257813 13.601815 3.721030 5.078212 12.638049 8.381143
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.848528 5.475110 11.094949 4.788927 3.232259 3.868721 11.924637 15.237498 11.098086
[[401]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.115900 51.418248 16.221545 20.267229 11.840098 3.920901 3.193352 22.941097 7.310324 15.591396 12.841047
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.611750 8.520333 7.316870 3.168446 14.297966 25.361768 13.626863 3.697342 4.558638 13.265658 8.484743
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.051088 5.375656 11.638290 4.917008 3.145269 4.097146 11.859153 15.237737 11.141489
[[402]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.244547 51.240905 16.349218 21.115957 12.065138 3.936084 3.178603 23.102957 7.283434 18.106454 13.171455
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.635318 8.263593 7.106601 3.741801 14.104728 23.025612 13.625109 3.926154 4.621400 13.003140 8.308659
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.420738 5.537346 11.753910 4.823307 3.096071 4.016025 13.651012 15.018553 10.450383
[[403]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.362010 51.470977 16.877048 21.098343 12.214021 4.101873 3.407119 20.042646 7.037157 18.178804 13.657639
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.624824 8.295030 6.792567 3.240123 14.102991 25.202617 13.606512 3.733257 4.621591 13.451294 8.233221
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.328551 4.259810 11.544956 4.912506 2.835859 3.944758 14.139549 15.127164 11.494394
[[404]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.258379 51.091818 16.950646 20.998718 12.421386 4.103012 2.997963 19.979360 7.877472 18.199524 13.638908
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.737777 8.475625 6.729758 3.547765 14.666979 24.315375 13.535938 3.753563 4.673836 14.026493 8.109561
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.355655 4.147739 11.863893 4.812812 2.910967 3.947575 13.927612 14.917133 11.515860
[[405]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.805785 50.813791 16.814026 20.916828 12.244445 4.208011 3.334556 20.571229 7.713643 18.492136 13.594166
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.554334 8.462204 6.457340 3.670846 14.619080 24.129646 10.544671 3.802181 4.764338 13.726863 8.040471
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.099844 4.436635 11.856456 4.438826 3.047351 3.889409 13.804427 14.982271 11.569071
[[406]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.583830 50.346807 16.733692 19.913572 11.926570 3.896423 3.295158 21.020642 7.936435 15.464447 13.484327
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.556965 8.456507 6.666074 3.573172 14.507872 24.805673 10.604819 6.502257 5.030568 13.666917 8.107099
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.436217 4.569501 11.986850 4.378985 3.204202 3.819782 13.931160 14.877034 11.852143
[[407]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.242199 50.385238 16.367589 19.689793 11.931957 3.969203 3.251965 21.121609 7.739921 15.653163 13.143083
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.453250 8.524556 6.331607 3.579491 14.013202 24.858056 11.034569 6.566406 5.194951 13.467704 8.180350
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.479737 5.005242 11.644286 4.400824 3.156502 3.893587 14.277770 14.983327 12.286535
[[408]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.206811 50.121929 16.473773 19.822055 12.171558 3.885859 3.343662 21.048002 6.829946 15.398449 13.324878
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.528162 8.303641 6.791112 3.453173 13.954695 25.064023 11.092578 6.391570 4.857650 13.534050 8.007201
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.193348 4.854109 11.836776 4.234903 3.244003 3.828499 14.191199 15.367362 12.246265
[[409]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.619444 49.687732 16.247207 21.929367 11.602025 3.660686 3.375163 20.507492 6.626489 15.955339 13.915203
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.453926 8.276591 6.003412 3.470130 14.405678 25.082785 12.097415 3.736452 5.184521 14.311267 7.979139
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.560318 4.874764 11.999401 4.495586 3.269731 3.664804 14.075893 15.219694 11.977172
[[410]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.806053 49.509724 16.675402 21.928870 11.908310 3.931307 3.294525 20.663888 7.185173 16.037058 13.496142
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.582432 8.000614 5.950126 3.248519 14.567291 24.646773 11.704244 3.889696 4.783759 14.045775 8.052558
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.639119 4.548971 12.092776 4.484953 3.508964 3.724863 14.124195 15.128427 11.889364
[[411]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.966337 49.462633 16.805303 21.619444 12.018303 3.866425 3.176342 20.495663 7.832813 16.193434 13.501447
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.554567 7.957397 5.578603 3.225375 14.912679 24.801227 11.474555 4.076846 4.699018 14.058143 8.046485
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.414390 4.607607 11.871117 4.730060 3.424320 3.791931 14.092761 15.061869 11.625437
[[412]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.987685 49.388055 16.884315 23.495528 11.565685 3.729064 3.042966 20.658026 7.685202 16.148855 13.699000
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.333724 8.292291 5.847322 3.271071 13.166927 24.424282 11.787317 3.869122 4.742496 14.137151 7.851264
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.450814 4.588416 12.019955 4.693928 3.069720 3.649784 14.187792 14.999716 11.798661
[[413]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
55.081294 49.801325 16.554691 23.507470 11.548140 3.411672 3.431936 20.166733 7.770456 16.357522 13.461208
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.254240 8.395748 5.808655 3.427303 13.045617 24.290675 11.604265 4.016146 4.551709 13.393148 8.048318
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.347789 4.507840 11.837570 4.625065 3.077961 3.815831 14.196041 15.120445 11.835408
[[414]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.871933 49.506537 15.989077 23.289424 11.865155 3.395852 3.306526 18.839363 7.844593 16.280385 13.614798
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.423409 8.386682 6.081471 3.424953 13.828616 24.851400 11.590451 4.383050 4.602930 13.182552 8.063000
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.431008 4.611000 11.676043 4.911929 3.027626 3.500782 14.414945 15.043428 11.933647
[[415]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.846656 49.607040 16.112049 23.542376 11.998633 3.777982 3.286467 18.834862 7.570950 16.344153 13.520228
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.223579 8.401457 6.056892 3.468525 13.724598 24.437986 11.789297 4.489789 4.802872 13.257051 8.011385
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.073170 4.684646 11.632815 4.601481 2.896117 3.691766 14.224782 15.189483 12.190091
[[416]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.835284 49.670770 16.681590 21.698312 11.882628 3.702828 3.140619 19.080667 7.755613 16.067862 13.861801
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.208650 9.892212 6.716690 3.359979 14.319536 24.385026 11.490896 4.540822 4.776004 13.180740 7.813540
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.063573 4.798748 11.811744 4.702156 2.801069 3.670710 14.033234 15.366487 11.136203
[[417]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.284667 49.239386 16.079542 21.843549 11.983011 3.751611 3.212600 19.793313 8.124988 16.256852 13.447244
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.859684 9.661079 6.545335 3.336760 15.828548 25.166838 11.423677 4.862792 4.811413 12.896253 7.313527
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.889129 4.704104 11.945947 4.472615 3.092134 3.519459 14.244908 15.107566 11.524529
[[418]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.200687 49.459424 16.815736 21.651613 11.846565 3.821153 3.276928 20.092290 7.572561 15.886128 13.217452
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.983869 8.644328 6.387133 3.294950 15.983052 25.030558 11.465812 4.751019 4.819013 13.022735 7.284231
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.836032 4.611924 12.187125 4.331839 3.260295 3.564645 14.157954 15.335049 12.393001
[[419]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.180878 49.295340 16.623626 21.790619 11.936341 3.805737 3.319296 19.793006 7.567138 15.674040 13.771095
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.964704 8.641477 6.121862 3.316744 15.828366 25.410243 11.448547 4.393068 4.524587 13.176350 7.487803
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.074587 4.796673 11.935693 4.298400 3.375084 3.441522 14.214488 15.051541 12.348373
[[420]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
54.375397 49.475504 16.577551 21.608031 12.010095 3.653411 3.636918 18.085389 7.766163 15.868552 13.236109
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.091235 8.242719 6.471023 3.494314 15.876876 25.305887 11.292590 4.227859 4.713658 12.911176 7.267394
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.130397 4.972420 13.211605 4.813268 3.594561 3.486749 12.961229 14.860550 11.820701
[[421]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.519790 49.871996 17.014760 21.978770 11.864703 3.585291 3.518742 19.680844 7.779795 15.786327 13.700811
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.292392 8.455209 6.404206 3.673443 15.893765 24.449428 11.240243 4.479844 4.830502 13.159677 7.154543
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.048057 4.448449 12.962938 4.922496 3.465967 3.646529 13.278895 14.921153 11.711482
[[422]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.791882 50.125495 16.497644 21.362069 11.749992 3.642997 3.444776 19.922510 7.427826 15.530670 13.639841
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.426039 8.569272 6.423089 3.527262 16.081692 26.239118 11.077056 4.500835 4.912596 13.325186 7.344025
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.073382 4.482620 11.402659 4.942624 3.537222 3.668257 13.158714 14.660170 11.780638
[[423]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.858412 50.775690 16.313326 23.363089 11.565547 3.811747 3.141078 20.013332 8.066875 15.484391 14.077583
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.412661 8.280636 6.928275 3.599865 14.204122 26.619403 10.797399 4.403296 4.740617 13.419511 7.201610
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.993252 4.029481 11.551556 4.958193 3.470476 3.588444 11.698423 15.156121 11.697228
[[424]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.878567 50.377207 16.376420 23.879014 11.527115 3.848816 3.120777 20.420723 8.062463 15.081118 13.629890
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.559964 8.189296 6.838097 3.599311 16.196635 26.438533 10.746182 4.701530 4.613592 11.756159 7.357814
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.752420 4.013596 11.340973 4.535485 3.566579 3.843170 11.893554 14.994351 11.741048
[[425]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.857407 50.599653 15.898038 23.507373 11.660430 3.943440 3.092736 20.546256 8.343532 15.154291 13.888831
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.554284 8.288750 6.710771 3.526338 16.041448 26.517686 10.877384 4.608274 5.116493 11.523352 7.138904
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.665361 4.069899 11.132425 4.544743 3.586945 3.670029 11.832521 15.271144 11.701822
[[426]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.018194 51.002084 16.081366 23.447968 11.383980 3.979848 3.248665 18.851143 8.168969 14.663576 15.466572
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.514605 8.872382 6.668427 3.551493 15.945510 26.243241 11.523788 4.692042 5.478492 10.972995 7.405953
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.994755 3.828770 9.915739 4.719575 3.520242 4.099762 11.820170 15.127159 10.327388
[[427]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.228197 50.791728 16.280380 22.644754 11.321624 3.932564 3.386486 18.090883 7.971683 15.241513 15.473523
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.481193 8.931726 6.651662 3.470146 16.163307 26.430181 11.557507 7.445134 5.360578 11.639659 7.458118
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.745815 4.029685 9.975986 4.556618 3.521379 3.974487 11.746141 12.198624 10.691828
[[428]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
53.306940 50.918839 16.622158 22.259004 11.561494 4.054105 3.198461 17.787934 7.935257 15.865295 15.125386
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.711529 8.147450 6.864198 3.397018 16.047798 26.140165 9.501590 9.870700 5.467325 11.441166 7.483779
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.647738 4.041003 10.464924 4.468363 3.358375 3.940969 11.814901 11.949039 10.569479
[[429]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
52.559388 50.513966 16.612403 22.848523 11.722759 3.860317 3.342256 17.719120 8.260119 15.781831 15.470374
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.488707 8.259787 6.785022 3.238594 16.190360 26.516998 9.009838 6.737601 5.300918 11.469303 7.187745
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.993833 3.935525 10.782098 4.449124 3.394827 3.900542 11.773930 14.563877 10.824173
[[430]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.119174 50.545821 16.706552 23.033208 12.182794 3.736139 2.999367 19.452999 8.084889 15.618897 15.043792
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.167356 8.180955 6.645364 3.594413 16.620518 26.425387 8.944765 6.717110 5.232197 11.759739 7.160868
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.684862 4.282823 10.470134 4.352512 3.238392 3.735735 11.763817 14.844538 10.813008
[[431]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.003895 49.699419 16.803554 22.952766 11.895205 3.911402 3.166752 19.269760 8.172985 16.130638 15.099324
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.387458 8.144294 6.288408 3.531721 16.182261 26.316797 9.256320 6.691509 5.089588 11.660406 7.069295
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.964582 4.056583 11.274303 4.187950 3.389148 3.774853 11.532271 15.100503 10.767247
[[432]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.204623 49.648218 16.946099 22.468983 11.972255 4.105065 3.317995 18.998300 8.661301 15.948383 15.523728
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.442486 7.972454 6.414656 3.319533 15.791511 25.749036 9.004169 9.612371 5.264930 11.229242 7.708771
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.835671 4.149159 11.369789 4.077977 3.301711 3.799173 11.661919 12.000478 11.044251
[[433]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.175621 49.828146 16.734471 22.220145 11.912976 4.106379 3.262637 19.469869 8.793143 15.373115 14.908211
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.309900 8.634525 6.412444 3.564038 15.607061 25.920969 9.219179 9.607524 5.364251 11.129400 7.559861
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.817729 4.076715 11.148093 4.300458 3.160195 3.829095 11.604211 12.026217 11.026139
[[434]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.767992 49.673033 16.607968 22.723967 11.742863 4.093659 3.352817 19.491019 8.625838 14.814963 14.883572
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.579772 8.622368 6.281812 3.570494 15.597654 25.890915 9.251728 9.368366 5.367093 10.894007 7.806145
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.662059 4.361421 11.473384 4.343477 3.213093 4.051251 11.598308 11.982178 11.101126
[[435]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.684226 49.810018 16.747715 22.718210 12.019341 4.225726 3.525018 19.624951 8.462082 14.769849 15.063407
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.325420 8.453683 6.273734 3.538435 15.498915 25.791297 9.157367 9.257832 5.404242 10.995718 7.884197
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.673297 4.014974 11.250876 4.197299 3.241048 3.765907 11.997417 11.986718 11.279825
[[436]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.709961 49.668138 16.761607 23.087140 11.998680 4.184412 3.168399 19.331375 8.281216 15.094834 14.983838
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.592687 8.220867 6.615421 3.281785 15.394213 26.157918 8.732690 9.173200 5.690552 11.021914 7.223869
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.718523 4.098432 11.462936 4.103212 3.255718 3.582878 12.000363 11.938904 11.625805
[[437]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.444887 50.280260 17.021576 22.781653 9.466616 4.155497 3.334400 19.752536 7.914881 15.101704 14.214173
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.675651 7.855947 6.754406 3.611498 15.334814 26.259920 9.075842 9.196170 5.873350 10.067291 9.697870
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.911442 3.911423 11.706437 4.119343 3.234571 3.760473 12.127305 12.018077 11.443337
[[438]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.267937 49.846763 15.195081 22.338333 9.660669 4.138292 3.319280 19.677751 7.746057 15.149370 13.914600
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.790619 8.032266 6.366157 3.472498 15.308698 26.880022 8.833196 9.184764 5.551632 10.011943 9.811998
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.803468 4.220492 11.788609 4.482844 3.064308 3.756448 12.026888 12.405266 11.674947
[[439]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.580895 50.473259 14.654350 22.551487 9.427766 3.833267 3.423648 19.779175 7.290005 15.203822 13.957702
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.854846 7.944248 6.494793 3.646956 15.542003 26.439196 8.844490 9.058951 5.777963 10.079238 9.787996
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.812934 4.323856 10.627795 5.004845 3.128046 3.963726 12.110561 12.228043 11.610522
[[440]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.447540 50.458939 14.870749 22.928728 9.621579 4.155491 3.201590 19.785596 7.941937 15.151640 13.690389
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.519429 8.060620 6.256100 3.655525 15.788538 28.169609 8.784540 8.723887 5.839644 9.947586 9.227505
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.690405 3.987317 10.860642 5.110824 3.418705 3.885654 11.486505 10.715748 11.595291
[[441]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.304177 50.669307 14.196943 22.414688 9.633700 4.347821 3.529185 19.964971 7.283405 15.354803 12.039945
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.449697 8.096773 6.460921 3.261469 15.825045 26.349981 8.715625 8.895244 5.758292 10.251711 11.099703
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.772586 3.944055 10.789161 5.138578 3.442980 3.855339 12.053447 12.322335 11.370129
[[442]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.544489 50.397956 13.478925 22.542501 9.728808 4.060276 3.543292 20.405332 7.928316 15.485354 13.416289
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.461995 8.042751 6.234172 3.354877 15.909052 28.065521 9.053672 8.534920 5.498570 10.071965 9.391424
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.626030 4.088284 10.660942 5.074706 3.204618 3.984735 12.005419 10.903931 11.652308
[[443]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.411591 50.405790 13.641048 22.896767 9.790766 4.259008 3.380274 19.855664 7.813888 15.040752 13.387370
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.496226 8.240769 6.286657 3.339074 15.747614 27.975718 9.089567 8.715376 5.262043 10.038092 9.053939
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.868566 4.143893 10.777273 5.082596 3.285778 3.841389 12.043520 10.882950 12.040461
[[444]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.349102 49.820371 13.223715 22.631568 9.819201 4.304007 3.394218 20.057832 7.858227 15.534168 13.574512
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.612806 8.198790 6.219315 3.178583 15.383158 28.139457 8.871740 8.902842 5.562467 9.893198 8.830784
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.713191 4.404615 10.831814 5.045152 3.278195 3.905669 12.039245 10.846032 12.089156
[[445]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.140108 49.866290 13.693978 22.867148 9.925766 4.210033 3.321262 20.001350 7.901943 15.557938 13.560669
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.721893 8.289794 6.126195 3.329122 15.372844 28.440847 8.692227 8.847874 5.131033 10.082087 8.810231
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.717786 4.343224 10.603848 4.842758 3.155215 4.000376 11.922734 10.856512 11.910666
[[446]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.729989 49.846651 13.707168 22.688698 9.910285 4.290276 3.269083 18.074561 7.790823 15.929226 13.527217
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.356109 8.331682 6.141781 3.342987 15.293682 28.347624 8.649531 8.824081 5.365927 10.273489 8.727418
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.743828 4.198485 10.687034 4.703722 3.148223 4.134718 12.095787 10.627382 12.024281
[[447]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.106816 50.369321 13.511424 22.299602 9.656174 4.269716 3.426333 19.771181 7.971553 14.819645 13.543459
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.361275 8.213152 6.371323 3.510453 14.934948 26.842072 8.427677 8.658437 5.477694 10.157110 9.408923
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.682899 4.494639 12.841097 4.718930 3.108023 4.223157 12.182942 10.437874 11.604690
[[448]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.772874 50.114308 13.751657 22.589031 9.895343 4.168640 3.554252 19.675556 8.050540 14.710360 14.179222
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.588099 8.070557 6.208616 3.403791 14.520007 26.994483 10.960654 5.971647 5.398305 10.165340 9.355159
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.772109 4.459525 12.575496 4.889645 3.153292 4.338864 11.909288 10.394466 11.374447
[[449]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.524295 50.259696 13.577846 22.488991 9.847504 4.235039 3.576105 18.078588 7.909825 14.868087 14.059135
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.446524 7.850928 6.320591 3.485425 14.981814 28.347953 10.887141 5.916582 5.313060 10.157612 9.614569
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.597619 4.330053 11.298643 4.671611 3.238121 4.170331 11.948693 10.443649 13.040789
[[450]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.616147 50.141882 13.628533 21.908718 9.640065 4.342879 3.633865 17.667691 7.661597 15.040984 13.825324
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.634214 8.112044 6.518154 3.505600 14.908598 27.139758 10.711795 5.863433 5.300900 9.872193 9.487701
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.651360 4.398111 12.576873 4.899963 3.312481 4.306872 11.889122 10.392914 13.183438
[[451]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.989631 50.345990 13.526759 21.809783 9.668909 4.261478 3.379053 15.626277 7.729654 15.249320 14.369977
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.431835 8.102239 6.632583 3.492564 14.908369 27.233386 10.542692 6.039781 5.033805 10.296242 9.717129
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.577706 4.254181 12.267657 4.743611 3.255241 4.426823 11.920732 10.120768 13.195481
[[452]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.176301 50.201759 13.730944 21.693379 9.745551 3.786952 3.281080 15.446234 7.739124 15.201711 14.083108
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.595515 8.512630 6.003656 3.264796 14.980543 27.039078 10.656656 6.263921 5.243846 10.213852 9.898168
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.439818 4.384356 12.556543 4.837512 3.283521 4.409711 11.832729 10.240233 12.853917
[[453]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.177169 50.182926 13.527946 21.483358 9.789335 3.957575 3.325446 15.547042 7.509554 15.116250 13.883338
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.339673 8.437547 6.047783 3.805134 14.920596 27.076966 12.956391 6.093672 5.244962 10.138835 9.613459
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.437272 4.476499 12.885369 4.508483 3.262044 4.520784 12.252783 9.899955 12.896079
[[454]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.887885 50.459189 13.430760 21.361358 10.030187 4.022633 3.306579 15.736502 7.143186 15.076168 13.944101
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.284820 8.621929 6.099691 3.642183 14.836717 29.837900 13.181185 5.889805 5.356948 10.205056 9.374451
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.556115 3.870542 12.745153 4.962564 3.277242 4.620050 9.275140 9.692617 13.044150
[[455]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.335819 50.163882 13.325837 21.458819 10.298545 4.061221 3.208485 15.411015 7.532504 15.106347 14.019533
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.202129 8.802952 6.632410 3.576698 11.780708 29.718764 13.008105 5.826764 5.247136 9.894505 9.179030
NKE PFE PG TRV UNH UTX VZ WMT XOM
14.617455 4.031138 12.475928 4.881830 3.218263 4.357303 9.149367 9.870553 13.180018
[[456]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.251577 50.101636 14.100798 21.817946 10.327114 4.386659 3.218403 15.646277 7.492073 14.740676 14.030308
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.259315 8.544286 6.086250 3.506314 11.806711 31.312837 12.725195 5.818483 5.135147 9.613610 9.034083
NKE PFE PG TRV UNH UTX VZ WMT XOM
14.979629 3.816223 10.980333 4.113607 3.275436 4.371682 9.206974 9.954173 13.345163
[[457]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.320626 49.516518 14.174309 21.623319 10.272247 4.127579 3.173713 15.211826 7.517307 14.778294 14.080223
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.989089 8.460729 6.006145 3.644322 11.653731 28.555998 12.857952 6.148809 5.139971 9.312069 9.329099
NKE PFE PG TRV UNH UTX VZ WMT XOM
14.689599 4.194463 11.112186 4.446599 3.345561 4.408512 11.758461 10.000096 13.463414
[[458]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.062571 50.037591 14.019466 21.749998 9.860319 4.186234 2.865641 15.349571 7.831858 16.728953 13.756729
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.982276 8.478677 6.086977 3.690685 11.350521 31.571555 13.007482 6.097299 5.366791 9.587189 8.773552
NKE PFE PG TRV UNH UTX VZ WMT XOM
14.448229 3.872826 11.973224 3.835069 3.401853 4.365532 8.921306 8.085425 13.492809
[[459]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.103970 49.551641 13.959236 21.540764 9.615304 3.846673 3.350604 15.616238 8.732578 17.012725 13.822389
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.247486 8.396021 6.462717 3.581253 11.222369 31.107113 13.172621 5.994952 5.527714 9.221538 8.608939
NKE PFE PG TRV UNH UTX VZ WMT XOM
14.179496 3.972732 11.729131 3.782586 3.163618 4.478048 8.948173 8.134319 13.192004
[[460]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.727752 49.453109 14.001649 21.110755 9.858001 4.153801 3.152769 15.752185 8.155873 16.761426 13.670700
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.008202 8.290706 6.650444 3.654847 11.226452 31.669101 13.247765 5.926045 5.658310 8.985092 8.564179
NKE PFE PG TRV UNH UTX VZ WMT XOM
14.324845 4.177084 11.758103 3.770996 3.142767 4.629381 8.742033 8.173544 13.293766
[[461]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.164926 49.694760 14.200615 21.285687 9.964206 4.021207 3.400349 15.893296 6.874613 16.677149 13.900575
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.077307 8.483205 6.153849 3.581115 10.969785 31.570624 8.602239 8.052239 5.141945 8.755846 8.587206
NKE PFE PG TRV UNH UTX VZ WMT XOM
14.061404 4.548184 11.763919 3.527516 3.118593 4.516940 10.194910 8.485160 13.467816
[[462]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.833830 49.745518 14.444110 21.328114 10.080652 3.676851 3.699488 15.202679 6.798089 16.379519 13.600976
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.398708 8.999292 6.332768 3.436308 11.005797 31.263046 8.686634 8.180752 5.081482 9.362664 8.562823
NKE PFE PG TRV UNH UTX VZ WMT XOM
14.138122 4.668061 11.857840 3.653266 2.994352 4.459996 9.979950 8.372721 13.144046
[[463]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.462650 49.762971 14.452652 21.293540 10.126806 3.816665 3.523737 15.042722 6.951740 16.709649 13.485303
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.178205 8.696819 6.346669 3.292083 10.996173 31.297762 8.733221 8.350274 5.201764 8.860237 8.335306
NKE PFE PG TRV UNH UTX VZ WMT XOM
14.067939 4.624360 11.628839 3.542247 3.216078 4.604358 10.097322 8.343070 13.189555
[[464]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.965922 49.624823 14.235291 20.965471 9.917296 3.898564 3.506086 14.654069 7.101335 16.563582 13.486174
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.231278 8.797653 6.294412 3.453876 11.060660 31.527097 8.713446 8.535725 5.358509 8.734239 8.633018
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.910832 4.739958 11.718676 3.487308 3.201689 4.730513 10.271279 8.435537 13.088431
[[465]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.884642 48.998105 14.236017 22.412135 8.340966 3.998024 3.279646 14.372830 7.190528 17.298274 14.022825
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.397275 7.958872 6.136885 3.660969 11.414644 31.044952 8.693221 8.317138 5.590157 8.880023 8.598959
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.953708 4.464846 11.893567 3.436668 3.392460 4.536037 10.089541 8.033118 13.841809
[[466]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.770726 49.586521 14.240948 22.106239 8.637697 3.916978 3.528604 14.563248 8.841015 17.194067 14.184486
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.133213 7.983156 6.163101 3.335802 10.972946 30.845825 10.824918 8.153958 5.225823 9.087875 8.552427
NKE PFE PG TRV UNH UTX VZ WMT XOM
14.022007 3.917946 11.780694 3.515227 3.340398 4.399026 8.660389 8.269893 14.169220
[[467]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
51.215170 48.952936 14.269504 22.262483 8.375490 3.961839 3.474234 13.932336 7.647448 16.887356 14.583949
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.185631 7.531202 6.135504 3.496863 10.482469 31.041637 11.014931 8.323990 5.238389 8.894642 8.452580
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.993618 4.465225 11.798704 3.745622 3.341516 4.343427 9.886854 8.238209 14.132308
[[468]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.578689 48.760151 14.276663 22.369217 8.511793 3.800974 3.569111 13.870512 7.765758 17.135927 15.026729
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.991254 7.931699 5.949119 3.450107 10.556503 31.121563 10.889496 8.207697 5.065365 9.301979 7.801875
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.902784 4.171595 11.904634 3.885381 3.144092 4.421943 9.999296 8.370917 13.860691
[[469]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.302503 48.227353 14.588756 22.339147 8.801524 3.917806 3.263835 13.639874 7.290992 17.167701 17.227760
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.894836 7.979380 5.924943 3.430967 10.679877 30.862170 11.092432 8.047321 5.235392 9.497325 7.825854
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.652576 4.264266 9.985000 3.870669 3.374214 4.261860 10.113857 8.173707 13.824849
[[470]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.605491 47.719359 14.108218 22.173846 8.239676 4.066762 3.567480 13.435684 8.415781 17.198870 15.717879
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.059369 8.320579 6.065237 3.592318 9.751494 31.196011 10.771956 7.911842 5.382725 9.030506 7.393341
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.528469 4.146628 11.646464 3.747658 3.399063 4.355811 10.574372 8.573007 13.681125
[[471]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.404545 48.447001 14.016164 22.011010 8.218244 4.223599 3.591501 13.362583 8.401810 17.192047 14.879162
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.999663 8.521121 6.627768 3.602588 9.439518 31.576906 10.953894 7.901987 5.450407 9.132184 7.391494
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.398501 4.291155 11.320158 3.446784 3.351323 4.445964 10.670212 7.829938 13.718226
[[472]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.852232 48.027445 14.253130 21.861328 8.319061 4.163951 3.505525 13.156214 7.408744 16.745112 15.209697
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.979834 8.517557 6.673880 3.585828 10.463763 31.727805 11.104963 7.653985 5.304727 8.858134 7.494632
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.891028 4.096068 11.433658 3.602589 3.240370 4.729968 10.551890 8.015942 13.630986
[[473]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.911138 47.880243 14.190812 21.910215 8.642952 3.978251 3.335848 12.998257 7.391717 16.744149 15.462709
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.999708 8.680299 6.533380 3.410664 10.709501 31.750781 10.869644 7.539906 5.354212 9.072284 7.077784
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.533732 4.279484 11.282934 3.530650 3.252095 4.333979 10.486726 8.184894 13.752268
[[474]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.697753 47.539447 13.808613 22.045865 8.895608 4.062315 3.168770 12.951194 7.233922 16.775068 15.651096
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.005985 8.156913 6.793790 3.241806 10.372588 31.828437 11.098988 7.751369 5.638411 9.401937 7.157643
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.670066 4.137253 11.174043 3.623229 3.188745 4.449659 10.342209 7.991781 13.661797
[[475]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.096711 47.559317 14.045554 22.094795 8.617032 3.942208 3.317248 12.618708 6.982514 18.404762 17.403008
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.028109 8.274437 6.322311 3.388242 10.542003 31.676956 11.016709 7.588221 5.623427 9.610641 7.199485
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.597060 4.433372 9.480943 3.719475 3.261016 4.367333 10.204501 7.878522 13.426611
[[476]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
50.004319 47.676380 13.848903 22.011859 8.583282 4.039373 3.253730 12.722087 7.190668 18.230384 15.543244
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.074630 9.690778 6.192260 3.351256 10.356601 31.679719 10.798188 7.525941 5.406098 9.857217 7.269911
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.769724 4.710648 9.152840 3.822530 3.207482 4.447547 10.429896 7.584368 13.374480
[[477]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.730245 47.619090 14.220649 21.771096 8.615987 4.113396 3.271568 12.604295 7.106421 18.014196 15.564107
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.255920 9.999813 6.270239 3.394754 10.396063 30.871461 10.574238 7.365876 5.432493 9.633520 7.611430
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.523705 4.655651 9.252207 3.799057 3.444257 4.332001 10.304524 7.453335 13.664901
[[478]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.379386 47.781558 14.150291 21.504691 8.602648 3.908410 3.502589 12.541925 7.415907 17.904290 14.671725
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.245379 9.595208 6.608604 3.548288 10.401220 31.080574 10.818055 7.443226 5.296749 9.632062 7.753042
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.158703 4.575735 9.283769 3.752454 3.279925 4.343052 10.686957 7.630723 13.484561
[[479]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.143673 47.894433 14.248151 21.364821 8.436440 3.801160 3.517756 12.414249 7.587638 17.767430 14.754757
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.824718 9.714891 6.047582 3.290597 13.277834 31.259695 10.911647 7.340816 5.621252 9.895322 7.647525
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.137692 4.637165 9.120431 3.709063 3.157589 4.365677 10.922128 7.655889 13.704260
[[480]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.446097 47.151671 14.473315 21.049681 8.650987 4.030110 3.240259 12.218693 7.398756 17.808772 14.575924
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.066545 9.689920 5.832640 3.415782 13.278764 31.596092 10.714522 7.172017 5.257120 9.637311 7.525380
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.511202 4.834738 9.236086 3.900317 3.188223 4.269150 10.560719 7.853846 13.695148
[[481]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
49.155780 47.211189 14.474900 21.216968 8.603162 3.975416 3.362584 11.743315 7.374637 17.280075 15.642987
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.052074 10.134191 5.860629 3.272001 13.569622 31.243711 10.592475 7.215960 5.412727 9.798902 7.484465
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.433605 4.944557 9.250650 3.326910 3.115614 4.147645 10.311547 7.777681 13.525444
[[482]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
48.828505 47.132228 14.429137 20.684604 9.284460 4.113519 3.483587 11.168449 7.133252 16.901568 15.879159
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.164819 10.144864 5.892095 3.239467 13.916263 31.368532 10.545511 7.216930 5.200785 9.711033 7.717449
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.593732 4.613386 9.228806 3.437918 3.177028 3.978288 9.940252 7.654423 13.832655
[[483]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
48.780880 46.687709 14.377673 20.430693 8.916644 4.214134 3.564896 11.086386 7.293458 16.994827 16.955543
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.182291 7.830157 5.890174 3.530676 13.530111 31.528707 10.770903 7.133308 5.217951 9.404401 7.140763
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.989230 4.543438 9.399315 3.427383 3.253295 4.408230 10.168365 7.664611 14.497797
[[484]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
48.840806 46.331580 14.221825 20.426302 8.679743 4.351465 3.453220 10.948133 7.681592 16.931900 17.147114
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.199365 8.142998 5.872796 3.528658 13.165095 31.789772 11.079983 6.975729 4.974901 9.297354 6.993227
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.168335 4.503942 9.297459 3.426078 3.100373 4.380227 10.343600 7.641220 14.378528
[[485]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
48.077632 46.209293 14.657053 20.429656 8.484224 4.190252 3.537890 10.970517 7.169003 16.941558 17.060300
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.065630 8.262209 5.852943 3.655126 13.087030 32.545105 10.849104 7.078211 4.716985 9.077419 7.341037
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.439073 4.362444 8.889858 3.768640 3.329304 4.227268 10.416180 7.895210 13.813227
[[486]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
47.107175 45.962605 14.676373 20.563574 8.658700 4.022706 3.235213 11.016869 7.914567 16.834774 17.004054
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.176991 8.218572 5.816426 3.639486 13.500570 32.471223 10.379849 6.964816 4.837852 9.071563 7.048980
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.976644 4.486411 9.185226 4.091468 3.320006 4.025349 10.382485 7.713826 14.301801
[[487]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
47.390058 46.010190 14.921048 20.418104 8.772379 4.234570 3.194870 11.134706 7.751038 16.922315 16.716267
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.059110 8.188634 6.234174 3.462047 12.942888 32.496865 10.529014 7.082016 4.893013 8.928509 6.805425
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.910193 4.366384 9.255636 3.826242 3.478098 4.115552 10.498244 7.489785 13.940246
[[488]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
47.136817 45.632926 16.251612 20.631925 8.832661 4.163609 3.129541 9.813010 7.518547 17.211063 16.486824
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.017404 8.271744 6.405685 3.377551 12.799328 32.462426 10.622081 7.025369 4.874235 8.746223 6.827551
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.068551 4.320220 9.474395 3.835825 3.553180 3.880051 10.313719 7.556914 14.092727
[[489]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
47.212052 45.481081 15.535758 20.672064 8.592271 4.269354 3.219556 10.011153 7.533739 17.209699 16.756685
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.067397 8.317570 6.245204 3.348047 12.993859 32.494863 10.423904 7.086097 4.539250 8.845608 6.708140
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.949442 4.689121 9.323104 4.591140 3.312982 3.687759 10.163428 7.547196 13.826450
[[490]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.820732 45.271249 14.225829 20.301864 8.835022 4.366530 3.130443 10.958538 7.401093 16.944500 16.726744
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.948929 8.080369 6.263091 3.421711 13.065808 32.307409 10.535686 7.479859 4.434919 9.124221 6.877096
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.981158 4.723753 9.349241 4.405847 3.264781 3.744474 10.154334 7.684912 14.028651
[[491]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.537224 45.183707 15.248693 20.525988 8.722282 4.339765 3.252150 10.052662 7.045361 18.753840 16.652574
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.892392 8.048313 6.748787 3.414831 12.865401 32.204762 10.879139 7.039743 4.562329 9.077160 6.978144
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.515103 4.399977 7.591306 4.635345 3.148795 3.840305 10.112892 7.704927 14.119456
[[492]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.271262 45.133419 15.417375 20.271611 9.048158 4.305651 3.160727 10.374672 7.034064 18.968150 16.388768
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.915154 7.562933 6.545336 3.319692 12.674465 32.421785 10.431379 6.889479 4.673917 8.986160 7.337787
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.812216 4.752099 7.843196 4.736044 3.359886 3.883461 9.942558 7.460216 13.560301
[[493]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.301153 44.931990 15.606553 20.472602 9.227524 4.164881 3.106514 10.172911 7.026082 18.996762 16.639731
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.408414 7.862856 6.404124 3.292556 12.714653 32.681320 10.519138 6.607822 4.343126 8.910245 6.861374
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.674113 4.542641 7.720324 4.459724 3.203148 3.870017 9.897183 7.455772 13.625746
[[494]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.461977 44.816672 15.564650 20.097090 9.118268 4.117625 3.084391 9.961726 7.267279 18.908924 16.733019
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.143447 7.828509 6.512577 3.238998 12.654895 32.190329 10.502405 6.936843 4.109241 8.754634 6.960988
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.696148 4.299408 7.884667 4.566035 3.033447 3.897052 10.001324 7.822755 13.693232
[[495]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.308799 44.867012 15.405877 20.080000 8.639227 4.153821 3.171310 9.748238 7.228217 19.222950 16.349105
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.034280 7.657459 6.355659 3.294850 12.797686 32.176743 10.488893 6.688705 4.683532 8.767869 6.946473
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.809872 4.635292 7.565656 4.342430 3.236521 3.921254 10.107815 7.574281 13.917065
[[496]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.225699 44.534136 15.428752 20.196809 8.120693 4.164326 3.096145 9.683104 7.142299 18.771758 16.212101
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.069829 8.057693 6.544558 3.475348 12.869927 32.659359 10.113404 6.623765 5.184928 8.141187 6.795215
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.097138 4.629855 7.752243 4.162057 3.228040 3.943804 10.128197 7.603300 13.787625
[[497]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.170503 44.589056 15.317198 20.035114 8.402512 4.132689 3.174323 9.370165 7.112393 18.763564 16.421049
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.217560 7.909283 6.331615 3.478287 12.904661 32.244049 10.264178 6.642562 4.949509 8.097994 7.047108
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.058931 4.648908 8.039714 4.111272 3.023644 3.801233 10.366693 7.502458 13.653346
[[498]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.080017 44.078680 15.362822 19.949256 8.287800 4.133969 3.328858 9.307659 7.069574 18.398425 16.800443
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.158198 7.999338 6.075010 3.675709 12.718371 32.239606 10.351583 6.845399 4.789984 8.076292 7.145535
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.988368 4.655912 7.793140 4.299444 3.103672 4.042539 10.513043 7.370655 13.570346
[[499]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.892753 43.748794 15.342062 20.123037 8.269748 4.178585 3.253197 9.666402 7.120162 18.641041 16.811276
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.183535 8.053299 5.917154 3.560649 10.872383 33.512722 10.254708 7.097971 4.843927 8.192053 7.183372
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.086744 4.738908 7.742741 4.057085 3.001525 3.627867 10.786653 7.274030 13.749421
[[500]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
46.001647 43.834919 15.523357 20.162938 8.185823 4.060733 3.329456 9.313907 7.079057 19.054742 16.611631
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.107288 7.880721 6.214689 3.773222 10.922728 33.339064 10.278156 7.004076 4.754220 7.992175 7.109678
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.021999 4.257072 7.707555 3.930799 3.239290 3.724084 10.951209 7.203383 13.788505
[[501]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.804792 43.700246 15.696461 20.453400 8.214617 3.896204 3.304853 9.443611 7.270844 18.834292 16.629269
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.069353 7.656309 6.139738 3.846649 10.787464 33.546082 10.170469 6.738577 4.994554 7.949167 6.857142
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.048377 4.186940 7.746133 3.992513 3.135530 3.722092 10.745085 7.127722 13.972820
[[502]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.519990 43.705619 15.500960 19.848563 8.172658 3.950577 3.391114 9.441103 7.091787 19.011914 16.533410
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.125271 7.896406 6.094521 3.627333 10.765329 33.732083 10.109573 6.798983 5.116420 7.931044 7.242219
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.914458 3.834339 7.807529 3.986500 3.258568 3.654234 10.684509 7.084098 14.412386
[[503]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.590885 43.712791 15.490240 20.186382 7.875308 3.823606 3.401552 9.438957 7.682324 18.323771 16.291287
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.076067 7.977945 6.291502 3.730479 10.316751 33.534261 10.162526 6.958336 5.150198 7.914714 7.119625
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.086427 3.903557 7.976974 3.783182 3.182067 3.611455 10.979844 7.017901 14.203257
[[504]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.569415 43.401711 15.143209 20.570262 7.945455 3.695347 3.349623 9.395181 7.815818 18.227776 16.583909
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.135599 7.757564 6.309195 3.742677 10.168527 33.204975 10.368498 6.794176 5.155740 7.919512 7.200454
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.095530 4.114821 7.809229 3.740243 3.047619 3.617512 10.914190 6.988638 14.239688
[[505]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.263258 43.483314 14.980682 20.368037 8.203762 3.959364 3.512279 9.173776 8.060048 18.254898 16.518655
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.147866 7.606370 6.182618 3.500580 10.325018 32.997749 10.270063 6.897641 5.084032 7.948036 7.044318
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.176657 3.905916 7.761962 3.803446 3.130955 3.945194 10.679467 7.059340 14.324562
[[506]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.133532 43.248644 14.764817 19.912508 8.182659 3.863677 3.290012 9.522870 7.847325 17.943428 16.682441
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.286053 7.742948 6.120629 3.374877 10.075680 32.908944 10.550814 6.772201 5.056863 7.846674 7.163836
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.349805 3.983624 7.779391 3.803358 3.391393 3.724965 10.629792 7.492867 14.336159
[[507]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.011258 43.332299 14.868626 19.999443 8.252381 3.837571 3.249083 9.507889 7.900064 18.020992 16.303266
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.164386 7.462395 5.946913 3.326343 10.074417 32.555172 10.526051 6.796859 4.984632 8.014629 7.135329
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.220341 4.149348 7.886016 3.876234 3.218332 3.626538 10.809261 7.568420 14.193249
[[508]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
44.812026 43.255464 14.361279 20.281297 8.465179 4.031190 3.371402 9.262109 7.496882 18.018241 16.063654
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.982645 7.532510 5.857553 3.408040 10.098709 32.349446 10.435320 6.865174 5.013557 8.059894 7.209080
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.301303 4.370816 7.809682 3.996289 3.345656 3.455856 10.751720 7.602315 14.363021
[[509]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.198612 43.304558 14.376445 20.316043 8.191933 3.831738 3.008737 9.374096 7.427785 18.136191 15.974353
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.439115 7.779722 5.457536 3.424088 10.314308 31.941932 10.481074 6.809433 5.159506 7.717238 7.324243
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.178956 4.191373 7.778152 4.222960 3.530309 3.437380 10.729938 7.434656 14.162021
[[510]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.164013 42.927608 14.282832 20.037207 8.530728 3.814918 3.198893 8.896932 7.692828 17.644237 15.923060
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.355302 8.196467 6.133222 3.310696 10.251620 32.223829 10.263478 6.659121 5.524655 7.535463 7.222081
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.021253 4.304718 7.808813 4.030789 3.506666 3.372752 10.819750 7.019261 14.234387
[[511]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.435491 42.962697 14.167059 20.034988 8.149568 3.843394 3.396823 8.945086 7.491221 17.804764 15.948071
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.182292 8.177878 6.052577 3.368727 10.291871 32.253574 10.389153 6.698895 5.126554 7.834915 7.202764
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.963905 3.776717 7.634844 4.222709 3.553939 3.436019 10.771763 7.132764 14.035611
[[512]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.260529 43.005142 14.142197 19.468901 7.905299 3.794947 3.314971 8.790599 7.216686 18.077413 16.119230
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.165405 7.833268 6.358207 3.564193 10.021436 32.340379 10.238503 6.855308 5.053060 7.742734 7.244875
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.184516 3.963501 7.530655 4.039844 3.350637 3.564673 10.805751 7.068880 14.483741
[[513]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
44.770379 43.404042 14.338037 19.106267 8.151737 4.099288 3.553032 8.598141 7.214378 17.943921 15.932528
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.214370 8.000704 6.235391 3.286565 10.161182 32.446629 10.223563 6.574350 4.981408 7.777773 7.461707
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.994198 3.819703 7.579745 3.994083 3.390488 3.635481 10.787886 7.225190 14.477433
[[514]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
44.570183 43.762812 13.402327 19.151133 8.504040 4.273239 3.630047 8.658579 7.378922 18.119993 15.739967
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.182961 8.307819 6.185645 3.168018 10.047565 32.720964 10.197162 6.188405 4.698337 7.802530 7.379152
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.063535 3.887492 7.522237 3.675462 3.482550 3.862914 10.689913 7.572575 14.216476
[[515]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.406364 43.425356 14.164307 18.623674 8.574675 4.161070 3.543292 8.256865 7.310698 17.420334 15.965500
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.087022 8.079124 6.434957 3.440190 9.992040 32.750861 10.167364 6.248550 4.888223 7.766612 7.518663
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.997650 3.824099 8.260529 3.814037 3.368730 3.744220 10.630727 7.200099 13.504821
[[516]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
44.939497 43.083801 14.260039 19.008151 8.446243 4.088103 3.351397 7.828061 7.448717 17.311158 15.603971
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.036807 7.957242 6.420160 3.191919 10.477054 33.023427 10.128749 6.203474 4.975465 7.804920 7.260781
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.995293 4.114639 8.681220 3.790004 3.188963 3.742390 10.919546 7.368759 13.565988
[[517]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.290992 43.421020 14.358266 18.487605 8.149390 3.927782 3.579354 7.871394 7.148515 17.181617 15.540312
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.101878 8.017054 6.351865 3.220748 10.351974 32.869108 9.922963 5.982801 5.125550 7.745406 7.209257
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.059238 4.202660 8.849430 3.874722 3.369399 3.685389 11.006683 7.083055 13.588696
[[518]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
44.949665 42.973781 14.745566 18.982301 8.014654 4.051496 3.795373 7.908065 7.193220 17.024138 15.363808
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.300163 8.070977 6.135497 2.972633 10.323895 32.668843 10.028783 5.993622 4.871216 7.733046 7.370048
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.213876 3.998639 8.598396 4.091137 3.139692 3.968273 11.154698 6.556683 13.959158
[[519]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.062174 43.470387 14.430138 19.002325 7.913942 4.012407 3.366085 8.284423 7.206413 17.178823 15.241224
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.991864 8.006654 6.214981 3.159505 8.541290 32.634925 9.862716 6.088319 5.112413 7.702440 7.038551
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.545315 3.773231 7.841279 3.765211 3.085181 3.832882 11.211469 6.431233 14.680167
[[520]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.115548 43.150186 14.428658 18.779098 7.925738 4.220677 3.458031 7.987403 7.183229 16.876233 15.394961
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.063048 7.968974 6.238067 3.389025 8.519450 32.369878 9.861568 6.023886 4.944093 8.012771 7.085956
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.832282 3.791723 7.576644 3.973886 3.324028 3.567736 11.144723 6.328898 14.471973
[[521]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
44.805751 42.983221 14.456788 18.931227 8.169726 4.304849 3.515942 7.632283 7.026296 16.924737 15.385388
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.243389 7.788105 6.368351 3.477526 8.379594 32.071891 10.059494 6.111504 5.071160 7.832735 7.075648
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.886978 3.884685 7.549028 3.933347 3.044677 3.466590 10.933063 6.416436 14.694782
[[522]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.224184 42.902075 13.943584 18.543579 8.038166 4.193244 3.371315 7.919835 7.017052 16.626364 15.494697
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.287118 8.024004 6.130059 3.287809 8.750510 31.785620 9.989363 6.226241 4.695222 7.923677 6.896565
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.842206 3.767356 7.644951 3.886432 3.126435 3.834189 11.054782 6.493810 14.893858
[[523]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
45.158191 42.814535 14.173945 18.506607 7.767641 4.149350 3.358531 8.362729 6.507498 16.521187 15.639358
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.442357 8.033752 6.152489 2.946107 9.041597 31.331820 9.840689 6.164988 4.742233 7.527006 7.171984
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.137421 3.840899 7.500973 4.014211 3.440803 4.012601 10.983010 6.409188 14.522882
[[524]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
44.472829 42.964594 14.161431 18.292852 8.039491 4.173253 3.203976 7.974481 6.672617 16.815014 15.651777
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.109738 7.828367 6.214251 2.931047 8.623319 31.425363 10.080130 6.213255 5.116418 7.517807 6.690503
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.117441 3.584416 7.393180 4.044559 3.403284 4.228836 10.639426 6.641569 15.251556
[[525]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
44.462903 42.972770 14.023020 18.490993 7.723122 3.992004 3.159401 8.071592 7.147145 16.444685 15.826559
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.051662 8.010319 6.086832 2.897121 8.136446 30.992772 10.177849 6.061095 5.318224 7.624137 6.910607
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.882832 3.917631 7.469810 3.778534 3.429643 4.332928 10.845266 6.357128 15.175812
[[526]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
44.903407 42.739995 14.252105 18.441479 7.517108 4.277138 3.446598 8.713066 6.863361 16.501123 15.903924
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.144338 7.886487 6.176549 3.086696 8.652660 30.930755 9.432054 5.817549 5.231705 7.599081 7.012072
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.381973 3.943418 6.722047 3.861158 3.500250 4.200445 10.690717 6.675600 14.484321
[[527]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
43.957959 42.694919 14.088928 18.354818 7.599195 4.078063 3.360315 8.535142 6.425191 16.471956 15.848553
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.107789 8.240928 6.138739 3.139901 6.933331 30.524447 9.764548 7.653698 5.255364 7.134265 7.527846
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.491206 3.826084 6.839409 4.109548 3.418771 4.121983 10.737268 6.385548 15.448760
[[528]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
43.785710 42.302233 14.457799 18.561150 7.808943 3.915446 3.556611 8.182252 6.145624 16.335083 15.633827
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.932637 8.407070 6.155960 3.080781 7.094306 31.703314 10.841106 7.619063 5.528172 5.725992 7.602460
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.674111 3.717819 7.099148 3.894328 3.658179 4.202239 10.856310 6.175993 13.943531
[[529]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
43.415528 42.345518 13.918837 18.102495 7.889176 4.068070 3.384086 8.306072 6.231079 16.049822 15.535219
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.198432 8.077004 6.588196 3.191455 6.560407 31.849368 10.021659 7.791016 5.388714 5.900197 7.595220
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.570785 5.006779 7.017939 4.158921 3.535196 4.130489 10.934337 6.259676 13.634891
[[530]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
43.805731 41.793708 13.662731 17.955739 8.341002 4.189175 3.717518 8.270086 7.036593 14.839867 15.594700
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.061575 8.111572 6.420995 3.404154 6.440515 30.303406 9.273153 7.886162 5.470513 5.789567 7.387312
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.672217 4.799644 7.036927 4.092546 3.418658 3.939186 10.739990 6.096821 15.310724
[[531]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.721420 41.785763 12.124785 17.948966 9.936271 4.084294 3.680973 8.342286 6.971830 15.126430 16.183618
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.345761 7.865307 6.430728 3.382986 6.328199 29.925345 9.555274 7.820211 5.412224 5.707258 7.435146
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.607718 4.599237 6.982024 4.140187 3.368324 4.108984 10.495168 5.828148 15.618021
[[532]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.391380 41.695831 11.644840 17.901058 10.052769 4.300300 3.792802 8.604799 7.255741 15.400510 16.266085
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.213585 7.806814 6.235783 3.252748 6.111547 29.409869 7.873334 7.575825 5.303747 7.100054 7.232128
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.578598 4.604327 7.254679 4.336933 3.604234 4.340824 10.687282 5.916255 15.320800
[[533]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.131620 41.242222 11.858708 17.725035 10.113556 4.200563 3.762055 8.587315 7.306171 15.862651 15.700583
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.088923 7.954672 6.070211 3.191924 6.370287 29.339719 8.009336 7.238563 5.132551 7.181484 7.522445
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.369677 4.602817 6.965187 4.887986 3.537610 3.933217 10.741319 6.050517 15.331300
[[534]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.124387 41.231386 11.444444 16.807840 9.972842 4.004276 3.685281 8.587274 7.190349 15.105858 15.535002
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.346844 8.163579 5.850731 3.311146 6.669638 29.811268 7.912977 7.193758 5.138716 7.227606 7.239731
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.781597 4.951244 7.276446 4.728101 3.558072 4.089746 10.928869 6.022472 15.373310
[[535]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.239494 41.140886 11.079899 17.214221 10.535186 4.138442 3.809644 8.473363 6.979527 15.213694 16.028037
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.089629 8.112841 6.011595 3.163364 6.267239 29.958582 8.470889 7.217792 4.883044 7.396457 7.754243
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.828842 4.777889 6.976900 4.635883 3.321651 3.943689 10.545391 6.023051 14.496470
[[536]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.258004 41.129896 11.882428 17.060056 10.605167 4.087085 3.874689 8.338706 7.223674 16.044958 16.240763
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.884237 7.997717 5.858938 3.336269 7.483224 29.272529 8.348334 5.621215 4.803678 7.065405 7.672753
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.040157 4.213160 7.359172 4.649803 3.429647 4.055669 10.490489 6.222767 14.422950
[[537]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.346039 40.645302 13.369908 17.153444 8.446936 4.283204 3.656189 8.299432 7.090776 15.502307 16.796903
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.169391 8.022810 5.809478 3.325230 7.690823 29.213026 8.434443 5.740305 5.357633 7.005076 7.444188
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.591052 4.377375 7.201938 4.418101 3.357699 3.845534 10.323669 6.246834 14.330419
[[538]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.886526 40.807348 13.166491 16.722499 8.495282 4.307792 3.460371 8.537309 6.971142 15.413596 16.673984
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.253390 7.986989 5.805702 3.359954 6.171078 29.155294 8.290998 7.530742 5.153509 7.373919 6.979203
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.122824 4.185888 7.412722 4.694598 3.384189 3.852788 10.361897 6.146271 15.002994
[[539]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.417617 40.685775 13.263040 16.973745 8.523866 4.195992 3.519029 8.190563 7.095164 15.342008 16.527314
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.045537 7.641680 5.746411 3.427552 5.914739 29.163482 7.978274 7.541231 5.384677 7.634463 7.233171
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.607325 4.132922 6.939171 4.609612 3.561947 3.613942 10.645845 6.226462 14.450642
[[540]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.399931 40.751175 13.448684 16.390860 8.634091 4.043834 3.569089 8.267693 6.815964 15.059478 16.575496
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.254421 8.245862 5.652911 3.456474 5.983670 29.213621 7.974708 7.574466 5.048263 7.443451 6.945779
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.413202 4.098782 6.928562 4.418464 3.332900 3.931617 10.717376 6.427396 14.505297
[[541]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.372759 40.840703 13.351352 16.234538 8.845926 3.951308 3.657458 8.359751 6.708584 16.488265 16.509774
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.306172 8.448143 5.558602 3.367988 5.828665 28.893869 6.969539 7.389773 4.958880 7.440694 7.224766
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.242467 3.897832 6.747470 4.433696 3.223116 3.890070 10.850030 6.473446 14.415954
[[542]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.630078 41.000614 13.086751 16.337642 8.975736 3.916600 3.608108 8.286056 6.862564 16.937003 16.044280
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.211760 8.026891 5.540292 3.542026 6.338266 28.821073 6.959918 7.329981 4.938813 7.338429 7.267096
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.262774 4.048731 7.176331 4.369205 3.115684 4.049550 10.812439 6.501188 13.963909
[[543]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.129671 40.382998 13.083582 16.530049 8.747733 3.900107 3.573872 8.050045 6.975306 16.480630 16.555782
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.039339 8.160951 5.623067 3.605532 5.971137 28.782263 6.842202 7.365790 4.675849 7.360704 7.418192
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.198234 4.013535 7.143992 4.633005 3.342534 4.213536 10.775819 6.392403 13.893859
[[544]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.123837 40.209196 12.916801 16.314339 8.587026 4.172271 3.428592 8.250275 6.963674 16.446532 16.405651
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.800543 8.166094 5.712321 3.692752 6.232027 28.474943 6.832615 7.301139 4.702408 7.273704 7.299684
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.549528 4.075721 7.397678 4.770810 3.288917 4.081212 11.114926 6.477622 14.241945
[[545]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.095373 40.637820 12.509956 16.227312 8.268611 4.221526 3.774078 8.264762 7.001405 15.270300 16.781712
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.714699 7.962450 5.850255 3.573951 5.821134 28.400799 8.336871 7.240275 4.586781 5.828696 7.226492
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.629521 4.292167 7.421888 4.444783 2.989950 4.072127 10.868756 6.798009 14.207780
[[546]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
42.221678 40.117452 12.480815 16.015055 8.220551 4.220655 3.742004 8.103898 7.240589 15.699904 16.517392
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.829999 8.013141 5.772186 3.576336 5.802678 28.351330 6.972070 7.227480 4.711025 7.493810 7.182937
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.757965 4.355075 7.110796 4.101816 3.236217 3.863497 10.638622 6.757180 14.517932
[[547]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.787878 40.303576 12.545733 15.994203 8.075331 4.278684 3.502267 8.007490 6.686459 15.511083 16.191860
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.430123 7.912085 6.047037 3.485491 5.813668 27.882111 6.859380 7.097387 4.559744 7.299901 7.424814
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.436185 4.636695 7.228012 4.188781 3.031499 4.500820 10.735390 6.658480 14.647737
[[548]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.973858 40.443223 12.519307 15.897509 7.718606 4.182000 3.449675 8.064157 6.729732 16.360306 16.562420
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.123003 7.655792 6.305530 3.465719 5.706875 28.036023 8.462822 7.103774 4.878467 5.636489 7.140319
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.131763 4.642102 7.294742 4.303988 3.272599 4.375019 10.823720 6.681905 14.297185
[[549]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.595535 40.153517 12.268140 16.136344 7.792531 4.233896 3.574170 7.934400 7.037055 16.385723 16.851007
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.974981 7.863914 5.972143 3.358250 5.527958 27.962853 8.176735 7.223224 4.584814 5.700099 7.371125
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.635786 4.579453 7.211462 4.207353 3.367233 3.726495 10.768773 6.920364 14.467420
[[550]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.397705 40.218739 12.230230 15.769511 7.741654 4.412946 3.666426 7.905649 7.578097 16.635250 16.022858
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.012176 7.813818 5.660511 3.556455 5.539227 27.890006 6.835422 7.106133 4.735417 7.129797 7.109930
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.674873 4.480199 7.133775 4.280498 3.440097 3.845925 10.607067 6.641600 14.554371
[[551]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.362107 40.214596 12.251648 16.094194 7.618102 4.501268 3.487034 7.978106 7.163454 16.059203 15.924234
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.127995 7.999002 5.869052 3.508562 5.610274 28.050664 6.713529 6.889216 4.818663 7.397979 6.923550
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.773622 4.502737 7.437789 4.117744 3.202368 3.775878 10.437469 6.642488 14.496761
[[552]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.308617 40.455791 12.309673 16.145071 7.258112 4.630646 3.341126 7.784814 6.949123 16.117521 16.040216
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.868067 7.926099 5.896416 3.694109 5.616830 27.387447 7.110722 7.049876 4.735352 7.097600 7.003938
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.831743 4.619409 7.243196 4.406888 2.934758 4.141038 10.322689 6.645958 14.677245
[[553]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.333383 40.229516 12.547353 16.224553 7.335943 4.413760 3.463471 7.469166 6.722333 16.107235 16.077703
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.908083 8.071167 6.083591 3.514810 5.448567 27.157791 6.775046 6.887092 4.604330 7.104405 6.939333
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.163583 4.630508 6.554946 4.384975 3.261639 4.365458 10.764197 6.585129 14.641613
[[554]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.328362 40.130815 12.531563 16.333207 7.525181 4.220502 3.537928 7.326551 6.436916 16.284767 16.505547
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.788693 8.341687 6.149480 3.440009 5.457555 26.991783 7.075614 6.721020 4.704004 7.155585 7.094990
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.278199 4.953424 6.628238 4.249514 3.223839 4.055612 10.204741 6.627745 14.090310
[[555]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.201158 40.253770 12.195000 15.844734 7.875377 4.269529 3.747250 7.055225 6.443736 15.889237 17.165417
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.904953 8.037029 5.968647 3.415172 5.679104 27.126060 8.369016 6.815191 4.641815 5.590908 7.063948
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.012073 5.042060 6.641472 3.909549 3.272629 4.180737 10.339828 6.521103 14.048710
[[556]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
41.028240 39.850175 12.541318 16.109492 7.487852 4.169076 3.601026 7.406888 6.282413 17.922247 16.953255
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.671793 8.324632 5.908376 3.554103 5.514829 26.819520 8.559602 6.963401 4.892742 5.425941 6.951203
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.035834 4.894482 4.639460 4.172735 3.084228 4.020029 10.429912 6.316928 14.206611
[[557]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.433530 40.062983 12.469835 15.784496 7.451816 3.847289 3.386568 7.458649 6.673391 18.130633 16.652361
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.372696 8.185376 6.202112 3.537952 5.641146 26.508690 7.144450 7.241070 5.114109 7.305461 6.716101
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.180377 4.861992 4.634777 4.091365 3.182980 3.983613 9.969517 6.117562 14.843829
[[558]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.150945 39.947035 12.188530 15.949846 7.743841 3.826243 3.693939 7.061230 6.559884 17.886186 16.788752
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.754639 8.503773 6.108313 3.481591 5.796922 26.572894 8.763598 7.277326 5.012248 5.487465 6.421970
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.701436 4.997505 4.597692 4.248060 3.061209 3.860768 10.046905 5.884511 14.924474
[[559]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.887730 39.707339 12.449468 16.284158 7.337530 4.173489 3.788195 7.294791 6.918923 18.045270 16.488879
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.557365 8.055882 6.211022 3.354821 5.860409 26.781443 8.511847 7.035800 5.136761 5.195307 6.536069
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.587006 4.773515 4.449359 4.185041 3.234607 3.996408 10.064154 5.815164 14.500324
[[560]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
40.905929 39.558858 12.761239 15.539317 7.710765 4.178574 3.496797 6.929507 6.478056 16.605378 16.845195
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.674408 8.057062 6.179990 3.449376 5.757445 27.449990 7.034319 7.094281 5.212542 5.074077 6.633433
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.510958 4.250575 4.681133 3.892726 3.117097 3.661101 10.426713 5.693690 14.629979
[[561]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.980174 39.248860 12.827250 15.714813 7.530342 4.543288 3.392552 7.381512 6.631343 16.304216 17.055757
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.702648 8.141899 6.097746 3.812654 5.847276 27.382389 7.048974 6.826820 5.127993 4.986276 6.761120
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.258553 4.389167 4.107868 3.978960 3.240532 3.562847 10.177256 5.802160 14.984452
[[562]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.642411 38.471864 13.057741 15.791183 7.685715 4.438005 3.372508 7.359887 7.070283 16.990716 16.844014
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.560525 8.135049 6.072291 3.770843 5.981623 26.646162 7.980249 5.888871 5.469290 5.097202 6.491695
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.183643 4.428342 4.221107 3.961851 3.095846 3.565149 10.111837 6.097477 14.848154
[[563]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.833491 39.323873 12.900411 14.444376 7.243739 4.320035 3.600661 6.813367 7.138440 16.818361 18.372850
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.959814 7.894223 6.179312 3.579316 6.102179 26.144507 6.984603 6.543758 5.197316 5.000658 6.706841
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.146148 4.337320 4.255060 4.372488 3.228599 3.860823 10.409546 6.203050 14.543290
[[564]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.806494 39.031687 12.718454 14.243876 7.409705 4.158075 3.622163 6.539339 7.123434 16.945908 18.305081
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.843317 7.957526 6.661719 3.633626 6.073262 25.996478 7.109892 6.721420 4.993357 5.205985 6.765879
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.781310 4.378929 4.285454 3.530879 3.017010 3.834199 10.244583 6.411087 14.709615
[[565]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.303888 39.476281 13.074198 14.294795 7.513368 4.261304 3.630668 8.482735 7.111644 16.231550 18.179489
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.818985 8.013640 6.619105 3.656143 5.606542 26.399098 7.116635 6.653942 4.723155 4.877897 6.522096
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.349760 4.412055 4.527166 3.926681 3.095190 3.778288 9.814264 6.246007 12.738995
[[566]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.964958 39.493330 13.213852 14.105281 7.794174 4.328356 3.644442 8.236850 7.020367 16.022019 18.051454
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.231879 7.831153 6.594552 3.397135 5.749316 26.316413 7.187475 6.649255 4.771448 4.771426 6.632884
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.628028 4.374122 4.322231 4.281081 2.926429 3.741196 9.950013 6.050378 12.676085
[[567]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
39.045930 39.305923 12.963087 14.135757 7.719769 4.164904 3.413277 8.216312 7.217068 16.345768 18.495245
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.090369 7.895976 7.006375 3.408044 5.593023 26.407008 7.516342 6.378001 4.799673 4.814388 6.244573
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.683511 3.874576 4.510965 3.911094 3.123892 3.738491 10.107322 5.933248 12.201184
[[568]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.730236 38.995253 12.826617 12.567563 7.554044 4.061137 3.623183 8.160400 7.104994 17.240854 18.857681
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.861285 7.795303 6.781519 3.537637 5.343097 26.584475 7.395321 6.586990 4.615646 4.683477 6.225747
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.338500 3.828759 4.780351 4.013640 3.375256 3.773884 9.999666 5.825383 12.293329
[[569]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.838721 38.759971 13.499106 12.811961 7.451793 4.058817 3.462438 8.451409 6.609431 17.515792 18.449966
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.268312 7.611523 6.885293 3.869520 5.448949 26.383701 7.364838 6.527718 4.572273 4.932473 6.077167
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.840119 3.522536 4.820248 3.492142 3.396784 3.806796 9.803983 5.889310 12.158624
[[570]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
38.642302 39.085727 13.343417 12.900989 7.156396 3.951521 3.441823 8.539451 6.570996 17.122553 18.302664
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.228708 8.122416 6.518215 3.630398 6.387759 26.219012 7.282872 5.329229 4.543603 5.177769 6.148195
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.712714 3.546383 4.696275 3.927091 3.211770 3.814054 9.770406 5.983369 12.347185
[[571]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.891610 38.918846 13.607225 12.685822 7.314139 4.309397 3.578122 8.378440 6.366486 16.769518 18.306481
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.232072 7.763725 6.893455 3.853271 6.480570 26.200417 8.184521 5.347395 4.518655 5.039378 6.117643
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.552335 3.816679 4.533308 3.850852 3.250957 3.800843 9.166978 6.194456 12.117396
[[572]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.903911 38.771487 13.676148 14.000160 7.238962 4.147604 3.356413 8.440180 6.595061 16.309459 17.933740
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.202077 7.685166 6.535567 3.724405 6.512781 25.512546 7.402101 5.311522 4.637415 4.963509 6.319464
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.060344 3.620343 4.293565 3.615366 3.513555 3.590863 9.829704 6.128814 12.298451
[[573]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.648017 38.439931 13.476322 14.194544 7.562122 4.091608 3.552253 8.554293 6.758861 16.370009 18.341415
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.039550 7.595536 6.576582 3.766628 5.448033 25.433110 8.375918 6.496773 4.382039 4.831157 6.081842
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.848866 3.844549 4.296151 3.944310 3.243747 3.764963 9.259884 6.351902 12.206155
[[574]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
37.721403 38.259709 13.038655 13.934330 7.676328 4.183883 3.530418 8.431127 6.968558 15.945744 18.070081
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.980275 7.319295 6.904167 3.761888 5.178893 25.316651 8.247133 6.281299 4.095774 4.860490 6.635810
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.561182 4.214695 4.432744 3.733302 3.271762 3.813840 7.843380 6.062330 12.591561
[[575]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.792088 38.054135 13.855829 13.847780 7.957530 4.208626 3.330429 8.467475 6.877204 15.827239 18.000231
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.709108 7.310140 6.513606 3.587583 5.129318 25.385297 8.048948 6.563569 4.291758 5.044795 6.709694
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.561179 3.958356 4.360138 3.774783 3.415373 4.021330 7.975885 5.876718 12.539797
[[576]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.644408 37.277236 14.390649 16.164189 8.117893 3.991068 3.567176 8.780410 6.799106 15.873972 17.493689
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.973092 4.586589 6.282969 3.860147 5.316998 23.049315 9.080426 5.629305 4.271217 4.864423 6.698168
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.379676 3.585016 4.467171 3.652272 3.261909 6.848838 10.040090 6.066216 12.497160
[[577]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.415003 37.709855 14.262675 15.864525 8.019022 4.036161 3.529749 8.283716 6.954455 16.134355 17.402554
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.730137 4.626016 6.285220 3.774999 5.479027 23.281461 8.870272 5.866493 4.915171 5.027798 6.791847
NKE PFE PG TRV UNH UTX VZ WMT XOM
14.146771 3.462534 4.356688 4.078154 3.250510 6.733280 9.755774 5.730009 9.953006
[[578]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
36.232541 37.978691 14.228788 15.814436 8.084872 3.826615 3.515625 8.439070 6.970955 15.809645 17.178501
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.720480 4.211181 6.384670 3.943523 5.272615 23.127115 8.856913 5.479125 4.644670 4.999224 6.821709
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.563858 3.837768 4.271003 3.808154 3.289422 6.406238 10.134994 5.584480 12.115975
[[579]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.312831 37.711185 13.949199 16.172057 7.985663 3.869167 3.462168 8.255933 6.425373 16.101378 17.386749
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.942357 4.408177 6.632308 3.801200 5.664188 22.982972 9.201196 5.669454 4.510733 5.173040 6.494036
NKE PFE PG TRV UNH UTX VZ WMT XOM
14.580082 4.080665 4.302959 4.066302 3.372368 6.358024 9.569431 5.422687 9.917941
[[580]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.771565 37.581360 14.012316 15.616034 7.648739 4.066823 3.637041 8.406137 6.679925 15.772534 17.517377
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.990165 7.129712 6.734082 3.862106 5.685314 22.823597 9.247607 5.605564 4.716947 4.889815 6.455692
NKE PFE PG TRV UNH UTX VZ WMT XOM
14.439508 3.922964 4.438434 3.761510 3.427407 3.505013 9.456330 5.550527 9.942953
[[581]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.627537 37.761990 14.863852 15.695291 7.675738 4.291338 3.655905 8.336345 7.085825 15.511076 17.525116
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.792708 7.091570 6.536374 3.963772 5.514300 23.351836 8.872702 5.587410 4.832967 4.756228 6.741392
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.077082 3.882252 4.235144 3.898964 3.361009 3.513142 9.607123 5.594285 9.610629
[[582]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.446849 37.477499 14.705302 15.752762 7.491537 4.319807 3.507712 8.100985 6.882575 15.569149 17.537161
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.818108 7.124032 7.089696 3.905298 5.520189 23.131349 8.853457 5.407333 5.127761 4.840836 6.539421
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.939726 4.058404 4.306241 3.812914 3.449125 3.509241 9.712662 5.586534 9.631947
[[583]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.401366 37.886013 14.444723 15.675117 7.048452 4.429889 3.491206 8.286933 7.067142 15.915350 17.529251
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.147131 7.186768 6.761511 3.804449 5.497491 22.866467 8.767620 5.534053 5.119881 4.848726 6.560349
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.943501 3.889060 4.256310 3.851569 3.226131 3.424088 9.392108 5.493966 9.961915
[[584]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
34.936355 37.921770 14.960240 15.472241 7.503834 4.475353 3.508206 8.291385 6.816584 16.064176 17.131834
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.222632 4.102503 6.744589 3.662626 5.315382 22.851333 8.699110 5.353862 5.069543 4.937833 6.351793
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.004685 3.743878 4.379172 3.541284 3.107184 6.500455 9.626939 5.527562 10.159778
[[585]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.511934 37.756570 14.352796 16.029475 7.565350 4.336078 3.266924 8.050232 6.451222 16.209030 17.448557
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.295531 4.234043 6.555931 3.680430 5.580452 22.642242 8.903002 5.493362 4.630175 4.828365 6.460383
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.015492 3.660647 4.490442 3.583824 3.314595 6.262990 9.260746 5.451261 9.854053
[[586]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
35.211155 37.531555 14.846757 15.960014 7.573736 4.532886 3.138277 7.804883 6.191681 16.348350 17.336452
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.340217 4.557851 6.472522 3.731141 5.338467 22.386549 8.786028 5.063641 4.965236 4.536704 6.509541
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.010779 3.728657 4.306363 3.791479 3.323783 6.641242 9.247042 5.348169 9.786164
[[587]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
34.942559 37.132571 15.149958 16.072848 7.448759 4.235666 3.244653 7.907247 6.571930 16.326425 17.013053
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.406822 4.698777 6.257034 3.565408 5.776198 22.395467 8.665486 4.961606 4.964571 4.588274 6.487294
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.636316 3.906601 4.339289 3.432890 3.305609 6.808525 9.036610 5.362272 9.902155
[[588]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
34.579628 37.347073 14.716494 15.379051 7.542233 4.227980 3.308215 7.671078 6.637522 15.503902 17.297556
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.958168 4.753355 5.946847 3.574083 6.790593 22.273657 8.522394 4.217752 4.644895 4.562302 6.558821
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.025012 4.151230 4.414160 3.471521 3.130170 7.114335 7.955057 5.361086 9.782972
[[589]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
33.745569 37.089589 14.620001 15.419935 7.371813 4.256990 3.444820 8.004838 6.497322 15.560959 17.388922
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.612698 4.382998 5.824377 3.612064 6.319408 22.187236 11.444364 4.757971 4.602134 4.853232 6.416484
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.776722 4.058074 4.440860 3.452087 3.533505 4.090699 8.154545 5.335227 10.043298
[[590]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
33.624315 37.158166 14.160856 15.445512 7.281607 4.217999 3.068940 7.642285 6.710139 15.510534 17.603679
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.587826 4.376147 6.014649 3.744240 6.235480 22.451529 11.132427 4.767893 4.358203 4.749259 6.432335
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.159954 4.118018 4.556503 3.613571 3.419207 4.060205 8.143905 5.234927 9.827041
[[591]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
33.709674 37.009910 13.646738 15.040113 7.980821 4.291762 3.265228 7.555289 7.177938 15.150638 17.467695
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.472323 4.571494 6.077321 3.479967 7.105659 22.454682 11.751693 4.208267 4.674833 4.669249 5.634242
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.852456 4.159546 4.525396 3.827227 3.530157 4.125831 8.432188 5.194738 9.759675
[[592]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
33.584048 37.172793 13.682168 14.660900 7.783424 4.354716 3.067264 7.560097 6.837315 15.587243 17.522331
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.718783 4.555084 6.246326 3.606010 7.167328 22.439726 11.814126 3.970482 4.798654 4.610288 5.638943
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.067145 3.869682 4.740791 4.030993 3.263633 3.950483 7.592721 5.047013 9.930107
[[593]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
33.147911 37.343087 13.679023 11.723898 7.260604 3.976525 3.220548 7.311026 6.933283 15.419191 17.090206
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.723171 4.237870 6.298606 3.650853 6.238938 22.214569 11.754427 3.966959 4.685906 4.430510 6.464445
NKE PFE PG TRV UNH UTX VZ WMT XOM
13.249766 3.944894 4.624801 3.844497 3.337104 4.011767 10.883509 5.108232 10.230575
[[594]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
32.972743 37.109840 13.819326 11.910535 7.456845 3.981136 3.139509 7.238376 6.784611 15.233958 17.017703
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.654027 4.416507 6.979418 3.400682 6.040227 21.892605 11.961285 3.832487 5.059948 4.562299 5.854912
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.477048 3.930511 4.564644 3.975188 3.359435 4.073604 10.687477 5.396958 10.459507
[[595]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
32.652399 36.641801 13.707775 11.156296 7.171887 4.062552 3.512689 7.169069 6.880221 14.994459 17.461236
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.721815 4.510571 6.534738 3.500684 6.225060 21.952762 11.799272 4.081857 4.989561 4.359049 5.765397
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.391758 3.959163 4.811667 3.675846 3.402137 4.169925 11.022425 5.136350 10.960373
[[596]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
32.778684 36.491141 13.477181 10.825098 7.201839 4.032670 3.309009 7.229289 6.676005 15.234255 16.859964
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.528242 4.788797 6.627243 3.359317 6.395484 22.124541 11.518134 3.926087 4.715047 4.242032 5.930368
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.141658 4.184942 4.713916 3.599989 3.437762 4.373587 12.300123 5.315673 10.910379
[[597]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
32.993520 36.427954 13.202621 11.109852 7.365511 4.136516 3.061082 7.627940 6.742644 15.100926 17.068970
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.405580 4.555085 6.574801 3.316469 6.473041 19.502030 11.186100 4.135352 4.663385 3.929462 5.761907
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.967422 3.919971 4.672554 3.798578 3.349382 4.375918 14.834418 5.238866 10.712057
[[598]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
32.604691 36.193568 13.346636 10.986612 7.338105 4.200805 3.108619 7.869771 6.958570 15.172386 16.836748
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.176941 4.743238 6.614481 3.598151 6.158190 19.386236 11.500102 4.029606 4.711373 4.007399 5.693453
NKE PFE PG TRV UNH UTX VZ WMT XOM
12.047174 3.853392 4.417927 3.699598 3.283484 4.107850 14.696964 5.081482 10.820403
[[599]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
32.360007 36.149405 13.420682 10.587408 7.300197 4.201490 3.268107 7.541944 7.063036 14.993963 16.821933
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.349100 4.870466 6.681135 3.775404 6.194798 19.259775 11.108016 3.989521 4.835625 3.956582 5.902135
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.761628 3.951516 4.270512 3.708442 3.194257 4.148095 14.697259 5.156472 10.649001
[[600]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
32.649769 36.216382 13.226799 13.750976 7.328655 4.055334 3.120752 8.068559 7.184880 15.328345 16.392364
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.196410 4.594581 6.398052 3.845939 6.526351 19.233344 11.095363 4.079392 4.975763 4.053567 5.674586
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.670883 3.784353 4.422641 3.531059 3.280853 3.913363 11.264501 5.119111 10.136427
[[601]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
32.612911 35.964607 13.467943 13.600170 7.275585 4.598982 3.134179 7.458789 6.856617 15.532907 16.432677
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.001890 4.512569 6.409594 3.654376 6.503900 19.092429 10.881857 3.866845 4.783335 4.240906 5.267394
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.397689 3.882897 4.411146 3.899576 3.459450 4.176402 11.547496 4.880638 10.340197
[[602]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
32.509462 36.185791 12.968161 14.161553 7.250728 4.156908 3.258734 7.500825 7.033107 15.238937 16.453637
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.110929 4.652696 6.747144 3.624885 6.194924 19.174551 10.792272 3.885696 4.769041 3.952166 5.469447
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.583195 3.814474 4.268416 3.821860 3.186181 3.766579 11.203734 4.880321 10.227769
[[603]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
32.227464 35.911774 12.789229 14.616665 7.257753 4.451808 3.150374 7.276109 6.947665 15.094432 15.926103
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.174350 4.591762 6.649273 3.607613 5.135232 22.935988 10.587087 4.845030 4.713825 3.908263 5.293162
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.508063 3.677908 4.207087 3.847982 3.209038 3.698932 8.279238 5.046457 10.528455
[[604]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
32.100578 35.718630 13.130868 14.378944 6.922237 4.419533 3.146731 7.190785 6.835408 14.847411 16.072424
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.963746 4.651991 6.627225 3.402154 5.495439 22.612555 10.614571 4.909176 4.426503 3.923355 5.387168
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.651958 3.792724 4.308031 3.927892 3.238549 3.698769 8.216593 5.003865 10.483655
[[605]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
32.135115 35.800161 12.708229 13.093101 7.252526 4.311933 3.108091 7.815902 6.398098 15.739703 16.000900
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.120920 4.811791 6.647565 3.405697 6.197713 19.418731 10.629570 4.748267 4.542602 3.991799 5.393765
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.544947 3.844248 4.236039 3.763574 3.342281 3.922531 11.254772 4.915588 10.056848
[[606]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
32.099310 35.564489 13.254600 13.015024 6.977419 4.109567 3.460368 7.571748 6.377377 15.399669 16.147828
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.280650 4.145905 6.564513 3.309000 5.952928 19.095773 10.562652 4.770393 4.581797 4.099499 5.383332
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.357293 3.586768 4.428121 3.711863 3.450473 4.235533 11.103789 5.010681 10.218554
[[607]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
31.883593 35.577377 13.009441 13.002192 6.727573 4.037195 3.286175 7.441678 6.579160 15.748212 16.031184
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.137211 4.263068 6.793251 3.045640 5.883310 19.280256 10.550280 4.642490 4.443925 4.411576 5.678967
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.173850 3.623945 3.691910 3.691014 3.250313 4.282714 10.905051 5.097651 10.318050
[[608]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
31.513836 35.480096 12.896669 12.911813 6.622694 4.337827 2.985121 7.487356 6.675408 15.855384 15.972607
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.160022 4.477147 6.742195 3.087066 5.972472 19.087964 10.319961 4.809538 4.413626 4.149408 5.594709
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.040362 3.598190 3.552555 3.804482 3.092909 4.347190 10.746550 5.125125 9.985864
[[609]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
31.527198 34.752520 12.926013 12.711856 6.807294 4.364808 3.026711 7.290865 6.501345 16.035816 15.842005
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.954551 4.631609 6.770626 3.149380 5.989599 18.795847 10.160061 4.886413 4.550381 4.213343 5.640192
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.841098 3.675456 3.802524 3.885794 3.027587 4.277531 10.549259 4.999717 10.064091
[[610]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
31.285381 34.328675 12.380837 12.707213 6.916126 4.217979 3.154263 7.226674 6.834504 15.753040 15.983312
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.025653 4.234627 6.810363 3.201098 6.153256 18.547345 10.241511 4.846506 4.454107 4.258445 5.687331
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.237490 3.807993 3.774768 3.705038 3.134778 4.221634 10.808360 4.486809 10.187416
[[611]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
30.932712 34.432252 12.231352 12.896672 6.642094 4.294413 3.209491 7.537293 6.876613 15.481458 15.882214
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.975327 4.331909 6.778484 3.177801 6.337657 18.245002 10.177586 4.900494 4.446563 4.020476 5.422462
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.238868 3.909071 3.680833 3.556535 3.122196 4.204061 10.889584 4.584082 10.019233
[[612]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
30.992997 34.166971 12.196661 12.190578 6.896408 4.413686 3.154086 7.567406 6.877354 15.510114 15.412966
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.151605 4.588413 6.917630 3.079272 5.963900 18.481900 10.194229 4.739695 4.569485 4.284813 5.308138
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.142769 3.958191 3.737908 3.642592 3.193587 4.148596 10.327477 4.569976 10.113045
[[613]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
30.738407 34.269850 12.158539 12.423136 7.312006 4.619850 3.025689 7.609931 6.959271 15.278508 15.051471
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.952430 4.720998 6.596924 3.150787 6.097931 18.300133 10.132736 4.825523 4.437328 4.161967 5.477846
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.912925 3.820005 3.578680 3.594752 3.161986 3.952002 10.416688 4.776203 9.964067
[[614]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
30.410875 33.753519 12.392330 12.226315 6.798779 4.240769 3.089928 7.711701 7.185690 15.342510 15.018782
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.190482 4.313579 6.669992 3.129636 6.304335 18.366674 10.270670 4.676711 4.452347 4.167140 5.457900
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.854367 3.930592 3.807234 3.486293 3.123373 4.053742 10.490862 4.588682 9.866871
[[615]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
29.926581 33.460684 12.276298 12.051088 6.920158 3.853211 3.312483 7.554667 7.174872 15.390539 15.044067
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.125365 4.497962 6.667689 3.159878 6.150694 18.271755 10.348725 4.520195 4.345742 4.170742 5.501739
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.676727 3.788047 3.733819 3.695833 3.281970 3.979305 10.563248 4.409412 10.164089
[[616]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
29.888417 33.032890 12.482752 11.850834 7.579784 4.190161 3.178093 7.049539 6.942703 14.675385 15.164648
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.264884 4.452962 6.574241 3.315497 5.943921 18.238120 10.195935 4.760415 4.492406 4.127055 5.133732
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.938047 3.769416 4.090015 3.492308 3.347203 3.935908 9.952021 4.614704 10.196408
[[617]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
29.558272 32.502869 12.414271 11.611938 7.099155 4.097719 2.981905 6.817895 6.636412 14.922062 15.077217
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.181280 4.538942 6.830365 3.324848 5.810916 20.996388 10.079376 4.263311 4.646564 4.119784 5.533264
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.099337 3.773218 4.283896 3.598861 3.559258 4.256292 7.339147 4.706590 9.918696
[[618]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
29.103399 32.670753 12.341242 11.341283 7.404815 4.372974 3.085134 6.875339 6.675631 14.507742 15.222665
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.040326 4.509606 6.554197 3.287871 5.915576 21.075476 10.126864 4.322660 4.603084 4.105878 5.208458
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.713067 3.921630 4.047086 3.514950 3.380311 4.149402 7.426066 4.735652 10.147104
[[619]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
28.897657 32.714390 12.771255 11.443127 6.923422 3.813812 3.009501 6.885503 6.517470 14.374508 14.649615
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.086148 4.670726 6.797153 3.273965 5.708408 20.762775 10.252310 4.439939 4.346868 4.302206 5.538385
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.805246 3.683378 4.058135 3.517125 3.680860 4.114823 7.412702 4.807212 9.945504
[[620]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
28.415776 32.184352 15.528799 8.555193 6.995622 4.056209 4.027733 6.985732 6.602087 14.455329 14.552798
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.287922 4.694749 6.710335 3.474198 4.873195 20.725429 9.820946 4.463472 4.678305 3.888667 5.582057
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.681555 3.537700 4.017960 3.565369 3.492717 4.055997 7.512814 4.764644 9.847880
[[621]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
28.518644 32.051528 15.453673 8.533424 6.868803 4.073903 4.204462 6.920817 6.459593 13.649798 15.067654
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.013444 4.668084 6.680757 3.304014 4.924668 20.668631 9.917638 4.473768 4.652274 3.993459 5.576558
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.865952 3.619634 4.040794 3.631342 3.448247 4.155788 7.459362 4.613588 9.671932
[[622]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
28.174203 31.985758 15.308928 8.479367 6.919390 4.092414 4.124006 6.666894 6.490870 13.676321 15.043652
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.909348 4.333376 6.573839 3.346689 4.929610 20.897468 9.938446 4.421583 4.559677 3.812690 5.563675
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.957828 3.500993 4.034972 3.378060 3.520085 4.441440 7.471147 4.647106 9.832656
[[623]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
27.944947 32.464921 15.515366 8.690182 7.058136 4.088967 4.095889 6.864354 6.570902 13.398630 14.629082
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.876981 4.274907 7.187451 3.276978 4.713097 20.559268 9.813109 4.354731 4.473523 3.843420 5.604877
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.926073 3.454819 4.088325 3.268694 3.583279 3.932502 7.494573 4.490899 9.737340
[[624]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
27.741554 32.195731 15.823708 8.555057 6.985739 4.293471 3.791941 6.700111 6.416272 14.083862 14.054432
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.300314 4.296370 6.928885 3.140700 4.838251 20.215291 9.873551 4.542215 4.630154 3.900199 5.514091
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.961125 3.660350 3.995669 3.050260 3.685682 4.039372 7.119109 4.586738 9.523043
[[625]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
27.522154 31.685924 15.344611 8.560923 7.185936 4.416207 3.979509 6.922821 6.455697 13.569000 14.676911
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.012087 4.146546 6.787779 3.386122 5.146235 20.124993 9.897968 4.450005 4.607544 3.602247 5.803345
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.683879 3.779524 4.300906 3.133964 3.456417 4.011127 7.202112 4.425719 9.101136
[[626]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
27.243395 31.995526 15.507323 9.159784 7.034011 4.476779 3.923216 6.887877 6.095829 13.308349 14.798835
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.173426 3.944166 6.777389 3.223517 4.968278 19.529607 10.117385 4.522098 4.662195 3.579928 5.760275
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.703472 3.848693 4.033863 3.242870 3.286115 3.915424 7.275714 4.560162 8.892809
[[627]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
27.133273 31.878498 15.339981 8.635291 6.860066 4.472268 3.984310 6.505742 6.176986 13.242492 14.641391
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.115899 4.537631 6.587024 3.090153 4.873133 19.891731 9.823646 4.488633 4.475134 3.935635 5.499811
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.916643 3.915224 3.603647 3.566923 3.233278 4.062326 7.524124 4.722905 8.848884
[[628]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
27.532859 31.519420 15.379777 8.111417 6.582054 4.063691 4.064344 6.599759 5.963435 13.232093 14.261778
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.169400 7.440313 6.769028 3.223182 5.183428 19.441274 7.674576 4.197971 4.482666 3.829225 5.550638
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.891773 3.905916 3.791079 3.314879 3.367688 4.025191 7.527115 4.534859 9.059671
[[629]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
27.152753 31.008661 15.261284 8.413953 6.385384 4.237418 4.131832 6.711171 6.096568 13.057130 14.403057
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.343706 6.920146 6.423010 3.233174 5.034297 19.087282 7.875878 4.329277 4.699953 4.029434 5.169885
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.974203 3.748816 3.549706 3.539903 3.314413 4.615425 7.587054 4.613440 8.897062
[[630]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
27.344740 31.174237 15.644263 8.327036 6.240670 4.144887 4.010808 6.685956 6.172861 13.099211 14.444357
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.348360 6.653350 6.554511 3.392428 5.007553 19.378484 7.474312 4.557406 4.508323 3.954565 4.856525
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.023572 3.753725 4.043028 3.282281 3.426471 4.061038 7.310464 4.539879 8.701686
[[631]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
26.969922 31.359813 15.127575 8.475634 6.374942 4.055644 3.921665 7.036091 6.086325 13.479846 13.913705
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.602202 6.575250 6.603112 3.451458 5.175304 19.181071 6.080607 4.283327 4.455335 4.139172 6.717229
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.738539 3.696289 3.689228 3.268832 3.470790 3.980562 7.453800 4.366690 8.607965
[[632]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
26.704341 31.014233 15.314315 8.292896 6.504383 4.321424 4.010241 6.714302 5.929218 13.260043 14.077026
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.494017 6.472295 6.441059 3.387564 4.993279 19.147660 6.120745 4.568150 4.803927 4.056293 6.547109
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.491414 3.819294 3.582205 3.390992 3.577355 4.058831 7.424378 4.176071 8.701081
[[633]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
26.695533 31.184134 15.424551 8.577545 6.405858 4.119178 4.034474 6.456037 6.200204 13.245003 13.959383
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.606198 6.543257 6.371770 3.486520 5.057736 19.069498 6.267335 4.440797 4.430070 4.134990 6.028280
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.461642 3.659157 3.623769 3.394651 3.442669 3.732435 7.331634 4.443141 8.770512
[[634]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
26.087215 31.167138 15.006251 7.876608 6.159984 3.906550 4.196348 6.448700 5.935498 13.261023 13.986560
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.555009 6.820483 6.833427 3.559071 4.835063 19.346261 6.088679 4.448818 4.762319 4.345198 6.201658
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.589117 3.745260 3.692987 3.332416 3.155223 4.087915 7.188126 4.349561 8.731178
[[635]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
26.071440 30.792160 14.976913 7.869494 6.270841 3.895565 3.412877 6.050400 5.987595 13.134936 14.178176
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.451751 4.748223 6.707618 3.542990 4.788455 19.677077 8.031395 4.416224 4.768119 4.248379 6.980677
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.141660 3.642483 4.032638 3.104854 3.152186 3.970081 7.237756 4.358014 8.274095
[[636]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
25.896876 30.738041 14.693579 7.869280 6.613611 3.893514 3.473725 6.171398 5.994705 13.105160 14.103548
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.107973 4.782996 6.654646 3.562539 4.776461 19.431747 8.188849 4.682635 4.599055 4.342135 6.670503
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.173291 3.527035 3.969331 3.163546 3.123583 4.080292 7.065231 4.646558 8.069623
[[637]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
25.924735 30.840624 14.710432 8.050230 6.564192 4.138622 3.375653 6.489163 6.100753 13.195767 14.032298
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.218319 4.023232 6.725489 3.550237 4.744182 19.179659 6.252918 4.558264 4.776717 4.214862 6.553631
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.894265 3.462842 3.688637 3.218828 3.367882 5.978361 7.130438 4.524280 8.157912
[[638]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
25.617289 30.531316 14.286333 7.867785 6.762679 4.100279 3.292775 6.525944 6.173985 13.202957 14.315254
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.968266 4.517420 6.670937 3.646852 4.649495 18.868166 6.511835 4.519213 5.031820 4.141355 6.613904
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.355600 3.495205 3.793979 3.208839 3.263486 5.802975 7.036951 4.457580 8.351356
[[639]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
25.601426 30.348501 14.621595 7.785836 6.709331 4.300469 3.440709 6.843221 5.730027 12.967814 14.301949
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.334751 4.222683 6.596291 3.456917 4.989501 18.142860 6.563234 4.402014 4.693215 4.221761 6.980708
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.101461 3.380149 3.934174 3.325672 3.223163 5.673395 6.972227 4.528906 6.543648
[[640]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
25.369731 30.143882 14.629728 8.012603 6.651191 4.289797 4.002412 6.867257 5.993121 12.940301 14.429054
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.440504 4.274492 6.786292 3.527912 4.945233 18.316454 6.435840 4.342013 4.564380 4.129400 6.483552
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.285966 3.514350 3.785488 3.408805 3.294935 5.744694 6.838372 4.242842 6.477544
[[641]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
24.439299 30.301764 14.582601 7.582987 6.611100 4.153402 3.914695 6.320701 5.754142 13.095905 14.633335
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.384590 4.534740 7.059045 3.681517 4.944352 17.992864 6.244169 4.185566 4.690234 4.031515 6.547111
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.519939 3.454318 4.100717 3.293645 3.179077 5.943684 6.905308 4.387509 6.791990
[[642]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
24.556476 30.427646 14.645383 7.648987 6.617229 4.211837 3.780104 6.262561 6.090653 13.354866 14.373612
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.382476 4.512096 6.737114 3.471601 4.862744 18.090167 5.896394 4.246594 4.742987 4.163229 6.596109
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.302470 3.596730 3.858061 3.323976 3.278539 5.778917 6.713249 4.450418 6.549529
[[643]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
24.555496 30.036960 14.602966 7.593579 6.506036 4.174542 3.830768 6.745685 6.131803 13.201133 14.066408
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.226824 6.520954 6.688458 3.582715 4.670860 17.891882 5.862870 4.216845 4.688083 3.799755 6.525809
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.382505 3.604928 3.767560 3.322034 3.338790 3.828101 6.902917 4.693710 6.636605
[[644]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
24.454737 29.776270 14.875752 7.626521 6.444937 4.157748 3.946375 6.988170 6.062652 13.031152 14.029293
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.608822 6.321432 6.836272 3.445206 4.286309 17.459543 5.560173 4.300974 4.636003 4.009579 6.730313
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.588395 3.506372 3.711319 3.464684 2.952384 3.843853 6.851246 4.630217 6.680335
[[645]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
24.144474 29.382510 12.605599 10.017551 6.646351 4.285382 3.150665 6.655876 6.043062 12.966560 13.986713
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.671335 6.465601 7.128724 3.367521 4.401208 17.220438 5.574326 4.222738 4.839128 3.670719 6.482821
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.390881 3.625047 3.354425 3.407223 3.069597 4.058194 6.490060 4.351874 6.789822
[[646]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
24.463764 28.805785 12.474083 10.264922 6.769148 4.268049 3.891263 6.668391 6.140522 12.897668 13.739661
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.471234 6.587319 6.816444 3.429063 4.584663 16.957811 5.629361 4.305111 4.846144 3.826456 5.811074
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.854235 3.663236 3.394395 3.299389 3.097366 4.010154 6.885547 4.487147 6.500144
[[647]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
23.273399 28.764134 12.416790 9.942531 6.582792 4.367050 3.813745 6.529203 5.771291 12.986762 14.061621
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.632421 6.480958 7.087637 3.317886 4.535409 17.130277 6.025082 4.314400 4.915275 4.093357 6.012992
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.061953 3.643023 3.549161 3.178178 3.191905 3.945597 6.616242 4.467670 6.197808
[[648]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
23.008881 28.469448 15.033367 7.596588 6.573956 4.419871 3.813887 6.216875 6.002710 12.904335 13.938797
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.368959 6.434203 7.436607 3.445283 4.570324 17.093029 5.872782 4.640227 4.799325 4.033664 5.811462
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.770851 3.465454 3.554966 3.005430 3.111454 4.044433 6.691335 4.387107 6.251172
[[649]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
22.723371 28.793309 14.672509 7.387074 6.188103 4.335394 3.204775 6.405247 5.871039 14.400795 14.212627
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.395907 6.220699 7.188494 3.696838 4.519433 15.197926 6.030870 4.736658 4.801707 4.346735 5.829021
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.492566 3.212373 3.611797 3.122490 3.107637 3.607717 6.700819 4.683001 5.880068
[[650]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
22.184170 28.833530 14.537059 7.523757 6.232195 4.369367 3.126289 6.276779 5.847540 14.462953 13.930802
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.442138 6.190860 7.453552 3.524185 4.711498 15.074614 5.540136 4.654221 5.036418 4.486090 5.695772
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.203860 3.452823 3.811171 3.307500 3.032769 3.625070 6.777319 4.452588 5.801685
[[651]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
22.409013 28.816884 14.582116 7.235476 6.417457 4.283225 3.193795 6.223831 5.582597 14.060193 13.763671
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.268537 6.355139 7.346172 3.530410 4.664292 14.777874 6.023655 4.665668 4.836461 4.251647 5.519159
NKE PFE PG TRV UNH UTX VZ WMT XOM
11.217252 3.520596 3.801748 3.363942 3.121849 3.891161 6.593137 4.344621 6.036454
[[652]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
22.939752 28.946532 14.289504 7.485921 6.502190 4.127384 3.644652 6.353237 5.470342 14.302216 13.111281
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.394380 6.471189 7.214352 3.367781 4.888663 14.612538 5.655988 4.482508 4.746443 4.395077 5.837148
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.453083 3.379048 3.802390 3.241088 3.144461 3.606259 6.652611 4.310012 5.934524
[[653]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
22.597395 29.062436 14.247962 7.438742 5.979617 4.171452 3.137939 6.193157 5.551765 14.148281 13.152451
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.271207 6.505532 7.474742 3.552082 4.777964 14.686345 5.754071 4.457912 4.719127 4.473195 5.668846
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.891645 3.526711 3.647985 3.358551 3.172976 3.374993 6.883010 4.339524 5.883213
[[654]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
22.574693 28.551191 14.522914 7.523799 6.598700 4.366690 3.216330 6.240379 5.602394 13.822087 13.199874
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.451657 6.262470 7.520768 3.704086 4.584502 14.445691 5.564988 4.123893 4.714310 4.088994 5.249416
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.847149 3.429326 3.824517 3.371400 3.353201 3.670574 6.374438 4.128420 5.980483
[[655]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
22.351770 28.131475 14.265384 7.350335 6.621136 4.251127 3.184506 6.108680 5.516727 14.017744 13.108593
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.221012 6.323639 7.360321 3.646600 4.605336 14.555477 5.601889 4.377521 4.776119 4.071273 5.525064
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.770025 3.362052 3.576431 3.483160 3.069571 3.571456 6.272533 4.641933 6.050740
[[656]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
21.712462 28.320884 14.388203 7.045745 6.671562 4.137230 3.031727 6.168797 5.503462 13.831946 13.402410
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.326769 6.212211 6.981552 3.535230 4.708422 14.417250 5.597892 4.354681 4.840799 4.321528 5.431168
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.783860 3.242496 3.738617 3.528687 3.109775 3.644552 6.242122 4.555053 5.947552
[[657]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
21.462028 28.195172 14.302355 6.986685 6.279700 4.067289 3.134808 6.165777 6.007574 13.482754 13.243229
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.436064 6.026116 7.022520 3.476362 4.746107 14.153281 5.567351 4.356491 4.997043 4.022778 5.515475
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.732655 3.186422 3.861273 3.389589 3.014970 3.701895 6.392243 4.498892 6.167424
[[658]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
21.591930 28.247641 14.230073 6.031424 6.302850 4.218960 3.198340 5.933105 5.483002 13.644093 12.932342
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.312831 6.066149 7.104586 3.667242 4.981102 15.309415 5.383661 3.985250 4.958629 3.907626 5.522632
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.633178 3.231703 3.718249 3.488237 3.039593 3.780486 6.696891 4.418782 5.924898
[[659]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
21.287712 27.646493 14.258911 5.871396 6.357743 4.037951 3.291675 6.097717 5.390948 13.580570 12.780980
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.368970 6.159088 7.228939 3.764295 5.069968 15.133452 5.682971 4.599291 4.698358 3.855541 5.443202
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.949878 3.181261 3.855665 3.496545 3.273501 3.736967 6.888061 4.504531 5.678929
[[660]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
20.923844 28.041578 14.375756 5.774920 6.331679 4.326632 3.074742 6.178991 5.146457 13.482689 12.480634
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.362462 6.277900 7.471874 3.663203 5.492991 15.075990 5.624135 3.870407 4.771062 3.892179 5.582447
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.166830 3.289951 3.458818 3.366387 3.293175 3.791384 6.771193 4.498994 5.492778
[[661]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
20.932086 27.906515 13.757365 5.845050 6.339779 4.516798 2.890098 5.743627 5.508017 13.671096 12.979364
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.301237 6.200767 7.183652 3.574104 5.185813 15.007217 5.526646 3.970618 5.103301 3.653065 5.236538
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.372575 4.191870 3.486250 3.388231 3.474219 3.830064 6.654379 4.140844 4.897285
[[662]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
20.170693 27.534645 13.796320 5.621817 6.575682 4.528995 3.102314 5.562276 5.666303 13.545227 13.252620
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.505945 6.070104 7.223420 3.583267 5.133286 14.921720 5.267163 4.077377 4.537369 3.777519 5.624699
NKE PFE PG TRV UNH UTX VZ WMT XOM
10.256585 3.388607 3.714141 3.218131 3.293555 3.958967 6.374852 4.407703 5.977334
[[663]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
20.056177 27.456629 13.669708 5.971224 6.260383 4.312631 3.543074 5.804640 5.540371 13.567093 13.233098
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.187649 5.779498 7.488548 3.407193 4.893391 14.849158 5.431846 4.312719 4.380433 3.876000 5.469113
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.945572 4.085573 3.539470 3.395355 3.366028 4.112107 6.333509 4.403351 5.359658
[[664]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.283359 27.302541 13.622284 5.789071 6.818023 4.393392 3.353745 5.728472 5.825651 13.287681 13.219869
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.303280 5.751762 7.395198 3.444772 5.200232 14.907880 5.315155 3.895758 4.434810 4.066553 5.610864
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.888758 3.175978 3.762688 3.252306 3.369006 4.019867 6.461755 4.473931 6.133769
[[665]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.437013 27.366641 13.389695 5.752487 6.833003 4.674364 3.424664 5.724694 5.850702 13.148613 12.808580
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.473010 5.687042 7.589922 3.474168 5.039852 14.865569 5.270168 3.884239 4.605358 3.896744 5.548129
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.688409 3.034325 3.704810 3.232541 3.350637 3.955870 6.381158 4.625580 6.022459
[[666]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.216781 27.381203 13.725010 5.845940 6.814608 4.675292 3.355726 5.779271 5.673340 13.421948 12.677382
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.377893 5.573572 7.325527 3.419479 5.138401 14.786764 5.252672 4.045802 4.378970 3.894986 5.674537
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.893204 3.205540 3.531167 3.328439 3.377238 3.734297 6.415760 4.716589 5.702882
[[667]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.323958 27.230522 13.464808 5.747720 6.479117 4.780314 3.590973 5.643503 5.791578 13.189570 12.518836
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.355968 5.822913 7.594436 3.258402 5.279851 15.093576 5.218966 4.216956 4.647290 4.041340 5.413642
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.709814 3.303009 3.498071 3.323482 3.272264 3.587312 6.350014 4.673709 5.575001
[[668]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.603210 27.320814 13.201081 5.712038 6.470564 4.659450 3.439710 5.539733 5.967647 13.214606 12.773682
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.145044 4.930365 7.300646 3.415011 4.938522 15.013551 6.427149 4.526081 4.418152 3.888715 5.819598
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.364283 3.379614 3.708036 3.378741 3.195325 3.870192 6.433719 4.476077 4.733736
[[669]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.651513 27.290309 13.517498 5.665630 6.489760 4.623256 3.606955 5.473026 5.680523 13.134428 12.372263
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.397943 6.289696 7.082133 3.419135 5.094478 15.444130 5.372033 4.106692 4.463535 3.974444 6.051329
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.183894 3.254813 3.431490 3.246245 3.359003 3.902106 6.323848 4.466539 4.786469
[[670]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.494788 27.003499 13.339076 5.555910 6.368962 4.583486 3.656083 5.509119 6.055617 13.032681 11.733290
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
3.892312 5.146122 7.109930 3.438545 5.263369 15.821521 6.499079 4.387488 4.450698 3.783154 5.754258
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.246133 3.466314 3.798440 3.281463 3.161945 4.008376 6.339414 4.675089 4.738152
[[671]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.847030 26.958781 13.058210 5.590274 6.222285 4.543705 3.592524 5.420129 6.038981 12.937733 11.856935
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.193369 5.237404 7.033893 3.394729 5.226343 15.542035 6.313195 4.347346 4.635005 3.761232 5.932944
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.214270 3.280663 3.808377 3.366442 3.404149 3.596423 6.272557 4.529033 4.884591
[[672]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.622164 27.207968 13.154889 5.194912 6.141314 4.548978 3.332144 5.470028 6.216299 13.250266 11.215837
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.202291 5.188012 7.007857 3.540246 5.433196 15.562274 6.319376 4.237783 4.576541 3.693457 6.306782
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.267832 3.279883 3.616242 3.618965 3.525800 3.397732 6.419050 4.499911 4.491657
[[673]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.965762 26.861734 13.087317 4.972537 6.134481 4.681282 3.425624 5.177226 6.251995 13.334050 11.116500
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.353239 5.048911 7.117402 3.350241 5.753152 15.703763 6.554630 4.062700 4.726850 3.643396 5.941505
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.216965 3.195517 3.584790 3.522737 3.529697 3.485196 6.404383 4.528917 4.470759
[[674]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.416688 26.611500 12.924784 4.979350 5.944443 4.700533 3.310462 5.341204 6.066383 12.770883 11.175477
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.326564 5.016250 7.191527 3.294936 5.650928 15.459892 6.346462 4.341003 4.772647 3.561804 6.535122
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.512600 3.500408 3.562510 3.368244 3.475980 3.690725 6.378221 4.351479 4.937330
[[675]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.177677 26.212009 12.531745 5.063525 6.365102 4.796953 3.847292 5.476779 6.034375 12.782328 11.190374
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.378934 4.898634 6.867273 3.595263 5.571091 15.414313 6.277234 4.226112 4.746601 3.671394 6.477850
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.498858 3.503667 3.358281 3.470859 3.418012 3.561667 6.389779 4.364403 4.890825
[[676]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.499389 26.272351 12.595938 5.383217 6.052631 4.537015 3.390193 5.721971 6.169133 12.485234 10.949707
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.332714 5.123447 7.397178 3.600013 5.762661 14.884272 6.488581 4.234300 4.792112 3.541546 6.276102
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.773695 3.557483 3.384990 3.252540 3.167486 3.446027 6.464301 4.364683 4.703020
[[677]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.852158 26.069826 12.839556 5.266389 5.829186 4.802930 3.755846 5.762332 6.428110 12.559781 10.534654
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.787317 5.201710 7.172464 3.638962 5.447242 15.016591 6.148890 4.468474 5.064658 3.550969 5.714240
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.471155 3.340919 3.360654 3.297638 3.204680 3.566042 6.288516 4.343812 4.523115
[[678]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.594272 26.375463 12.827108 5.195717 5.713135 4.665528 3.656044 5.528893 6.177371 12.163904 10.835021
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.176463 6.327779 7.324114 3.284982 5.372262 14.873178 5.186227 4.015065 5.044443 3.679370 5.904152
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.682861 3.618468 3.514049 3.447080 3.330721 3.424283 6.193379 4.622842 4.948916
[[679]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.467063 26.088945 13.134530 5.243403 5.864649 4.718126 3.704886 4.817127 6.277965 12.884765 10.844290
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.603525 6.059997 7.449756 3.245191 5.350472 14.777856 5.254930 4.033815 5.166780 3.586288 5.593121
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.131620 3.566142 3.368141 3.268087 3.135477 3.832125 6.125099 4.369213 5.303100
[[680]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.651521 26.199613 12.629371 5.276879 5.907718 4.629857 3.739505 4.627230 6.133852 12.802031 10.546952
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.824419 4.905156 7.598419 3.297030 5.491301 14.643121 6.294510 4.329776 5.123095 3.578227 5.654392
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.400088 3.401786 3.449236 3.232519 3.132661 3.808803 6.164049 4.067561 5.228339
[[681]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.404772 26.070472 12.473636 5.065998 5.831781 4.520658 3.876550 4.721243 6.425721 12.653056 10.519600
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.464800 4.920423 7.424687 3.393710 5.322493 15.274335 6.097312 4.746325 4.582579 3.544157 6.128717
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.296125 3.186490 3.459276 3.124459 3.305328 3.952383 6.366651 3.976312 5.200210
[[682]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.210159 26.037105 12.354405 4.821090 5.895572 4.101625 3.874284 4.472259 6.228150 13.119616 10.857329
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.475608 4.772540 7.737759 3.480044 5.396622 14.851462 6.331389 4.374049 4.857694 3.639129 5.588786
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.443961 3.355165 3.421336 3.234442 2.925635 3.875606 6.422129 4.414573 5.142298
[[683]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.149934 25.880357 12.589769 4.799712 5.796301 4.036964 3.621436 4.444496 6.175599 12.970660 11.089796
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.513079 4.818685 7.854432 3.584136 5.391705 14.719925 6.587294 4.235532 4.500091 3.815557 5.674922
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.004236 3.674643 3.360483 3.557805 2.958824 3.974283 6.501326 4.154881 5.045276
[[684]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
19.034792 25.993303 12.373716 4.900504 6.457519 4.285275 3.611158 4.406647 6.138996 12.958645 11.042316
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.308627 5.037620 7.702428 3.424807 5.486225 14.368551 6.467936 4.314246 4.677724 3.659311 5.445455
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.914005 3.600803 3.298667 3.617508 2.830030 4.018758 6.127412 4.177023 5.115215
[[685]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
18.979279 26.132145 12.169470 4.857761 6.213059 4.170554 3.718092 4.360047 6.071364 12.419204 10.719762
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.050243 5.046655 7.865604 3.435888 5.651241 14.727352 6.225271 4.181839 4.677181 3.585209 5.548004
NKE PFE PG TRV UNH UTX VZ WMT XOM
9.117060 3.475397 3.211140 3.453733 3.115679 3.801006 6.068360 4.041264 5.361945
[[686]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
18.985660 25.740324 12.403697 4.900392 5.849250 3.929220 3.591339 4.386800 6.084204 12.407551 11.043991
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.797588 5.057168 7.702631 3.250944 5.349924 14.431571 6.572727 4.258574 4.861005 3.701332 5.508986
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.801391 3.549340 3.391068 3.357817 3.248695 4.250172 6.308204 4.034601 5.322337
[[687]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
18.662709 25.787333 12.495789 4.738600 5.819565 4.100879 3.550392 4.461421 6.296170 12.664692 10.898790
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.632109 5.009387 7.550784 3.330383 5.396683 14.766122 6.253729 4.212378 4.812557 3.629866 5.347326
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.921454 3.547868 3.315460 3.539395 3.265197 3.896297 6.239029 4.021843 5.418704
[[688]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
18.494212 26.211909 12.205720 4.863787 5.879194 4.058560 3.502425 4.323374 6.369637 12.139068 10.888383
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.578655 4.966164 7.587896 3.336348 5.450721 14.887060 6.267138 4.104730 4.732715 3.426479 5.288818
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.826652 3.465478 3.360880 3.408608 3.443563 3.968579 6.491062 4.099564 5.558729
[[689]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
18.524899 25.651071 12.427167 4.800146 6.105557 4.019664 3.520332 4.570653 6.440789 12.320257 11.023644
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.718817 5.164998 7.358734 3.212114 5.257774 14.264096 6.558591 3.928237 4.908939 3.672264 5.404500
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.825689 3.408859 3.337032 3.498793 3.400542 3.960125 5.971382 3.900749 5.478317
[[690]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
18.829432 25.341916 12.791576 5.051188 5.487171 4.399180 3.695942 4.669281 6.171235 12.539547 10.950775
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.575572 4.903313 7.118611 3.370422 5.027451 13.977055 6.833741 4.050286 5.087368 3.598412 5.285839
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.672247 3.089652 3.569145 3.408195 3.436452 3.689966 6.361428 3.942738 5.354722
[[691]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
18.595603 25.677489 12.581606 4.843065 5.397319 4.177949 3.401137 4.226266 6.016601 12.499942 10.520187
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.898161 4.946823 7.351650 3.274777 5.172449 14.130907 6.556546 4.365034 5.058729 3.824578 5.347098
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.356563 3.078050 3.609775 3.505268 3.578872 3.580040 6.449934 4.206954 5.096996
[[692]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
18.148293 25.682121 12.738008 4.683356 5.476851 4.015138 3.388392 4.484480 6.361521 12.114945 10.303979
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.567090 4.933047 7.506027 3.150494 5.462905 14.200074 6.338937 4.209791 5.074222 3.601171 5.441364
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.403846 3.143567 3.649698 3.588465 3.794476 3.820422 6.277774 4.155843 5.082982
[[693]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
18.309259 24.973973 12.658334 4.549809 5.505411 4.068329 3.625882 4.339713 6.059394 12.272232 10.661270
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.615789 4.839547 7.638564 3.454811 5.061509 14.379656 6.240543 4.215658 5.226112 3.792507 5.343741
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.509836 3.228826 3.660878 3.297981 3.663397 3.729882 6.705923 3.867649 4.723728
[[694]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
17.717639 24.982919 12.194620 4.716894 5.914533 4.147442 3.707896 4.243850 6.264586 11.935102 10.762896
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.780615 4.857474 7.371966 3.599116 5.486935 13.980098 6.211167 4.043464 5.130082 3.930883 5.232566
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.571255 3.120018 3.377055 3.441326 3.683095 3.679829 6.506624 3.939347 4.840632
[[695]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
17.372897 24.661885 12.525681 4.640384 5.763064 4.084548 3.499794 4.242450 6.180314 12.322621 10.434084
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.871501 4.960172 6.791259 3.424407 5.463142 13.914288 6.406051 4.201878 5.342474 3.979252 5.825177
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.399917 3.141003 3.571292 3.487095 3.617285 3.903521 6.370089 3.918154 4.718940
[[696]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
17.230724 24.423818 12.132256 4.579797 6.177238 4.236173 3.463138 4.475557 6.077749 11.857089 10.320747
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.862457 5.225818 6.867961 3.489897 5.223028 13.890149 6.516366 4.421534 5.112611 3.825140 5.937507
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.399386 3.214789 3.417115 3.521142 3.533629 3.964259 6.346564 4.011159 4.715369
[[697]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
17.355790 24.355203 11.913076 4.694901 5.980841 4.028786 3.538398 4.458881 6.362420 12.156485 10.126170
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.510951 5.164072 7.127773 3.262989 5.073844 13.724621 6.403235 4.465962 5.254048 3.892050 5.777064
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.363503 3.306424 3.431944 3.477290 3.686991 3.940247 6.159861 4.101876 4.816813
[[698]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
17.342601 24.279787 11.689869 4.680238 6.053235 4.228212 3.316434 4.370702 6.496540 12.350759 9.659828
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.336109 5.141064 7.299240 3.246496 5.217172 13.751413 6.396734 4.418122 5.258819 3.907606 5.735626
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.393914 3.573794 3.167259 3.357229 4.040335 3.843239 6.039385 4.152602 4.994833
[[699]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
17.252984 24.378991 11.748146 4.871616 6.007618 3.946705 3.660252 4.210663 6.341367 12.196406 9.294619
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.284185 5.035536 7.364727 3.328540 5.153443 13.659472 6.811510 4.766983 5.186393 3.851877 5.782367
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.274132 3.630890 3.279940 3.358675 3.571610 3.826680 6.023581 4.263669 4.917934
[[700]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
17.094138 24.760275 11.976185 4.773804 6.107316 3.983452 3.578290 4.203851 6.063361 11.904942 9.160858
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.161898 4.964473 7.620818 3.230552 5.272189 13.675944 6.359201 4.740208 4.981455 3.703181 5.811840
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.530844 3.427465 3.570187 3.384523 3.932471 3.656794 5.945819 4.342812 4.952625
[[701]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
16.938201 24.095842 12.189415 4.770084 6.238718 4.008351 3.485592 4.191378 6.234013 11.736930 9.287057
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.451780 5.079736 7.289064 3.346301 5.480859 13.515005 6.332354 4.730600 4.780490 3.689022 5.939951
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.578252 3.548888 3.360194 3.136813 3.750678 3.768772 6.265963 4.020388 5.167335
[[702]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
17.137667 24.251661 12.015093 4.666362 6.054780 3.933749 3.670704 4.465600 6.218092 11.763828 9.273761
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.393953 4.988898 7.267006 3.500838 5.408338 13.225714 6.256417 4.808203 4.952139 3.598980 5.748226
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.316603 3.710314 3.370803 3.350843 3.673951 3.557818 6.092748 4.283200 5.161532
[[703]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
16.964334 24.136679 12.303275 4.583145 6.265491 4.238222 3.286556 4.320432 6.309612 11.776914 9.390876
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.406332 5.218954 6.882123 3.356545 5.248734 13.018040 6.352470 4.760688 5.073237 3.865248 5.655883
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.164583 3.682011 3.337780 3.392162 3.638337 3.753088 5.790892 4.375187 5.234408
[[704]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
16.656179 24.185626 12.175737 4.791846 6.146879 3.942311 3.419912 4.322322 6.564518 10.844251 9.301828
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.413044 4.998383 7.143035 3.339800 5.264991 14.067410 6.432368 4.484489 4.902253 3.786941 5.831216
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.631114 3.470029 3.440045 3.324671 3.741982 3.673558 6.085605 4.291769 5.007969
[[705]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
16.398998 23.755695 12.520981 4.839165 6.311973 4.024171 3.502152 4.240345 6.330045 10.731696 9.309552
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.717256 4.913194 7.086679 3.287090 5.149027 14.086924 6.267187 4.418370 5.268477 3.480582 5.786715
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.636903 3.349663 3.462486 3.410875 3.633153 3.936475 5.941021 4.543656 5.158254
[[706]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
16.347465 23.921045 12.230162 4.990045 6.387728 4.122973 3.600421 4.158154 6.567271 10.328796 8.918797
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.386876 5.410341 7.045543 3.391270 4.986497 14.047446 6.427404 4.553644 5.229242 3.432211 5.950225
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.449036 3.275325 3.523025 3.292866 3.641796 3.923943 5.882818 4.500554 5.234549
[[707]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
16.189912 24.044673 12.652601 4.894807 6.178824 4.165596 3.586442 4.162726 6.532489 10.216855 8.661645
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.540577 5.522710 6.866473 3.292559 5.407601 14.046296 6.462655 4.503240 5.127057 3.603774 5.967074
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.529692 3.232633 3.469017 3.215518 3.402030 3.935942 5.977606 4.129713 5.198195
[[708]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
16.137354 24.033594 12.357099 4.896624 6.007072 4.004686 3.707495 4.153555 6.331743 10.310452 9.024429
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.498443 5.629471 7.164783 3.225615 5.259169 13.868243 6.540144 4.604327 5.105117 3.693092 5.801443
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.550369 3.262096 3.567132 3.074931 3.266050 3.804113 5.827181 4.115866 5.334226
[[709]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
16.055019 24.063699 12.088537 4.979489 5.614390 4.163777 3.715496 4.492919 6.183125 9.935595 9.229299
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.326519 5.405158 7.001618 3.270757 5.379509 13.957362 6.187767 4.450741 4.981088 3.614213 6.086088
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.389932 3.541042 3.174653 3.163037 3.273558 3.979730 6.266211 4.648762 5.039496
[[710]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
16.190346 24.258965 12.033046 4.737414 5.859612 4.135914 3.581769 4.314499 6.294531 10.248651 9.119473
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.615865 5.340433 7.283828 3.195837 5.298176 13.834883 6.265050 4.340126 5.172413 3.624472 5.679849
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.454029 3.559951 3.202363 3.411825 3.212800 3.687381 6.231484 4.511642 4.954612
[[711]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
16.148241 24.405126 11.792058 4.883312 5.942627 4.005185 3.477491 4.302043 6.430277 10.597565 9.627355
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.502272 5.036420 7.030699 3.213073 5.165056 13.814503 6.039293 4.347994 5.162432 3.580001 5.867719
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.526567 3.422103 3.240550 3.048627 3.108356 4.057108 6.069274 4.398972 5.078447
[[712]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
16.041000 24.611998 11.885056 4.725355 5.839591 4.026592 3.462165 4.242371 6.261531 10.167611 9.438067
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.500954 5.087968 7.038628 3.247399 4.980092 14.205179 6.162716 4.367508 5.044374 3.725695 6.111125
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.562855 3.407422 3.135936 3.278619 3.301598 3.778167 5.752893 4.612512 5.057408
[[713]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
15.881308 24.391663 11.784669 4.804595 6.074683 3.866494 3.733880 4.490649 6.335903 10.116866 9.444635
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.322253 5.078556 7.307597 3.360032 4.983022 13.643718 6.184164 4.463043 5.358349 3.519193 5.592415
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.304134 3.327750 3.270710 3.479187 3.323911 3.921663 5.504427 4.578501 5.142632
[[714]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
15.873445 24.528534 11.894439 4.843241 6.147021 3.826021 3.465359 4.658227 6.334836 10.297411 9.426373
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.262152 5.290027 6.993583 3.084192 5.213804 13.596366 6.221117 4.071709 4.771894 3.657336 6.197090
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.197931 3.247938 3.290759 3.378808 3.272817 4.077879 5.827005 4.351844 5.076540
[[715]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
16.191207 24.265290 11.934660 4.680389 5.928277 3.954178 3.665275 4.499491 5.889500 10.221625 9.608882
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.325642 4.999355 7.356433 3.074395 4.945632 13.888199 6.148381 4.425033 5.122605 3.590182 6.167774
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.322880 3.331925 3.015588 3.315792 3.401819 4.038020 5.292957 4.254653 4.936091
[[716]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
16.049859 24.432519 11.616638 4.766483 5.835166 3.918846 3.386955 4.389422 6.140649 10.456052 9.654906
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.271203 5.215818 7.208180 3.160893 4.977481 13.653473 6.058637 4.101823 5.177176 3.539755 6.088581
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.197710 3.656542 3.297969 3.335610 3.436766 3.734873 5.440456 4.438263 4.870063
[[717]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
16.138270 24.327482 11.759830 4.800572 5.810424 4.096586 3.456216 4.534198 6.161987 10.377641 10.050747
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.329701 5.204881 7.094962 3.160841 5.078902 13.012921 6.070757 4.203022 5.640969 3.166082 5.678385
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.302988 3.581949 3.037633 3.178605 3.571195 3.721001 5.581809 4.147561 5.007883
[[718]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
16.217246 24.505662 11.720306 4.723306 5.699616 4.048511 3.142976 4.519841 6.354707 10.444524 9.712218
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.325951 5.294325 7.067060 3.100621 5.144388 12.973532 6.028809 4.218463 5.645497 3.425973 6.049132
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.001696 3.306165 3.023846 3.332913 3.693275 3.645141 5.365141 4.184702 4.931488
[[719]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
16.234262 24.256499 11.597819 4.681092 5.432972 4.189575 3.300252 4.363127 6.340476 9.574296 10.469288
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.488840 5.119345 6.840136 2.792428 5.457469 13.355242 6.179038 4.198987 5.479670 3.365689 6.038273
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.969600 3.269216 3.246217 3.116911 3.767028 3.804998 5.484636 4.149209 4.921588
[[720]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
15.219141 23.879285 11.501400 4.832841 5.340930 3.856699 3.143792 4.184144 6.388279 9.665761 10.364216
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.238611 4.985365 6.936369 2.867095 5.477293 14.616301 6.272701 4.413608 5.283954 3.523474 5.855933
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.175648 3.322864 3.204466 3.303236 3.736821 3.769853 5.286818 4.461346 5.098546
[[721]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
15.076293 23.843712 11.935215 4.803433 5.459901 3.852580 3.043870 4.303934 6.431565 10.427632 9.440136
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.382225 4.864994 6.608016 3.085810 5.503840 14.421051 6.329608 4.491089 5.527877 3.464003 5.758633
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.893315 3.287626 3.149981 3.397410 3.545010 3.688460 5.460031 4.422554 4.835414
[[722]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
14.140035 24.122547 11.654310 4.726431 5.508424 3.918947 3.170641 4.257007 6.628210 10.165541 9.411546
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.221815 5.026475 6.652479 3.004081 5.177861 15.381335 6.524051 4.360449 5.103596 3.636343 5.789746
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.737080 3.419566 3.094397 3.669305 3.403560 3.631021 5.840101 4.314825 4.781665
[[723]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
14.249154 24.266133 11.473637 4.935362 5.528435 4.010631 3.239809 4.470045 6.380286 10.205337 9.587439
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.467911 4.863862 6.049133 3.266993 5.295084 15.150261 6.150294 4.236936 5.129503 3.520731 5.925732
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.834210 3.579681 3.180585 3.502568 3.628034 3.455475 5.501954 4.349226 4.783891
[[724]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.980672 24.092050 11.723057 4.726376 5.487568 4.059404 3.363056 4.454176 6.330776 9.967948 9.556401
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.521582 5.055665 6.167680 3.273538 5.158651 15.105511 6.242348 4.103596 5.201360 3.552560 5.759790
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.088277 3.428845 3.091522 3.722716 3.495458 3.618554 5.259277 4.323404 4.950460
[[725]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
14.057403 23.909121 11.648170 4.647008 5.577426 3.939423 3.455484 4.114915 6.334399 9.077141 10.149183
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.715264 4.978966 5.955100 3.222025 5.241449 14.962667 6.149914 4.264966 5.200041 3.514464 5.805700
NKE PFE PG TRV UNH UTX VZ WMT XOM
8.202663 3.321244 2.985179 3.359688 3.688938 3.677360 5.550327 4.583298 4.838318
[[726]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.637765 23.945700 11.831554 4.861289 5.597905 3.970675 3.408679 4.096606 6.148137 9.090541 10.022359
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.396747 5.010263 6.405694 3.118443 5.087643 14.713663 6.187260 4.339313 5.577263 3.483823 5.694758
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.891941 3.278441 3.193483 3.503931 3.697557 3.877746 5.701765 4.517361 4.774239
[[727]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.565199 23.891310 12.136762 4.740076 5.614522 4.306703 3.286145 3.814071 6.270565 8.876701 9.465106
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.502026 5.154863 6.733143 3.001378 5.250202 14.832007 6.294356 4.312467 5.620242 3.452707 5.748876
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.815076 3.242422 3.100559 3.509563 3.666469 3.615481 5.658142 4.219483 4.840137
[[728]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.544453 24.047720 11.689646 4.914198 5.730986 4.218416 3.243199 3.895866 6.455449 9.098046 9.513483
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.355438 4.974521 6.786500 3.102742 5.214241 15.160043 6.183087 4.469239 5.436447 3.418088 6.110691
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.664547 3.247356 2.838784 3.264653 3.552498 3.521531 5.732755 4.178237 4.703024
[[729]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.503216 23.998951 11.787007 4.796611 5.770286 4.128753 3.308968 3.751252 6.378279 9.274895 9.285943
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.347237 5.414837 6.620217 3.474639 5.127612 14.798836 6.224233 4.401961 5.741069 3.322086 5.951220
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.522317 3.072053 3.178870 3.249106 3.492664 3.844330 5.424035 3.856093 4.598515
[[730]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.680083 23.324537 11.503792 5.048407 5.462228 4.092743 3.312926 3.784582 6.457492 9.205305 10.409164
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.771540 4.582120 6.613028 3.284962 5.194418 14.193337 6.791967 4.468923 5.496540 3.257868 6.011017
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.441649 3.224578 2.883913 3.443928 3.403113 3.634744 4.792868 4.204434 5.267766
[[731]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
14.083035 23.004242 11.742762 5.118821 5.554139 4.083931 3.362756 3.935471 6.072014 9.283412 9.762224
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.650725 4.647232 6.510689 3.330354 4.771800 14.042548 6.289622 4.335698 5.819401 3.531693 6.104594
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.417636 3.237543 3.041978 3.546427 3.216560 3.670339 5.420469 4.163151 5.054290
[[732]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.407094 23.240127 11.436192 5.187336 5.780308 4.176384 3.520939 3.896636 5.905503 9.757229 9.975046
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.565543 4.752950 6.762296 3.263826 4.882375 13.596273 6.515029 4.497822 5.758641 3.624787 6.001042
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.349381 3.356806 2.998812 3.459996 3.335603 3.454191 4.704321 4.082224 5.011373
[[733]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.293027 23.298197 11.390490 4.973679 5.153518 4.152951 3.530936 3.759656 5.968379 9.779329 9.838184
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.292534 4.566680 6.670344 3.297619 4.866803 13.813688 6.543423 4.588765 5.674870 3.767251 5.922986
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.285254 3.436431 3.244230 3.525279 3.512358 3.605600 4.576518 4.019148 5.246079
[[734]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.781387 23.160516 11.736365 4.761025 5.073575 4.394542 3.563725 3.827457 6.027142 9.449170 8.831505
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.616770 4.358479 7.206352 3.208065 4.652544 13.871317 5.794307 4.479657 5.632945 3.710654 5.831093
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.476808 3.357894 3.264633 3.573362 3.176417 3.767001 5.379768 4.247729 4.966703
[[735]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.781878 23.369208 11.792087 4.584360 5.103981 4.183356 3.384680 3.822997 6.060049 9.065888 9.611413
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.641641 4.363862 6.759111 2.906157 4.892451 14.009537 5.761762 4.388492 5.895702 3.332614 5.888113
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.546706 3.322759 3.147752 3.332249 3.465302 3.454471 5.299893 4.147060 5.075909
[[736]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.937145 22.892562 11.603943 4.840081 4.816857 4.040204 3.375576 3.704421 5.782986 9.019944 9.506311
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.028774 4.450570 7.136016 3.000459 4.864150 13.801116 5.830257 4.603257 5.644357 3.777444 5.719009
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.425638 3.408539 3.319581 2.903716 3.269998 3.464844 5.366038 4.259745 5.166354
[[737]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.514632 22.762855 11.425907 4.723807 5.052236 4.065395 3.092762 3.787181 5.715186 9.106900 9.560796
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.840336 4.520358 7.111058 3.001197 5.142000 13.452894 5.990435 4.323146 5.856841 3.588742 5.987658
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.360581 3.209943 3.202116 3.056520 3.351748 3.598405 5.686833 4.176790 5.086177
[[738]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.197224 22.951644 11.473578 4.791775 5.144865 4.284452 3.361833 3.825368 5.765014 8.915914 9.192450
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.803062 4.602362 7.204651 3.120199 5.164956 13.258056 5.790764 4.481191 5.961079 3.411504 5.711449
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.306775 3.233829 3.144294 3.081408 3.414669 3.670267 5.471090 4.148700 5.020344
[[739]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.422580 22.654677 11.201936 4.638351 5.079221 4.382139 3.315329 3.874128 5.992389 8.735517 9.125350
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.498820 4.680375 7.162819 3.320540 4.895956 13.283739 5.865607 4.296406 6.234226 3.596761 5.896198
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.181531 3.136043 3.202291 3.065125 3.457853 3.715082 5.848130 3.928965 4.896250
[[740]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.099068 22.610279 11.347701 4.697676 5.450531 4.590877 3.242254 3.851188 5.756885 8.780909 9.183709
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.679497 4.698160 6.930135 3.239703 4.974510 13.285811 5.711670 4.329558 5.959347 3.431492 5.831815
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.242767 3.158217 3.088133 3.365219 3.605093 3.450594 5.453168 3.963872 5.051002
[[741]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.953781 22.528092 11.502564 4.702431 5.227813 4.341594 3.279916 4.078907 5.952647 8.939729 9.039099
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.741406 4.509822 7.047913 3.200734 4.700077 13.194087 5.746996 4.413417 6.002823 3.613077 5.739483
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.280868 3.067468 3.293667 3.302205 3.353557 3.520000 5.529009 3.985152 4.895921
[[742]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.005275 22.761356 10.850809 4.630913 5.427525 4.668952 3.097783 3.659057 5.829354 8.619157 8.905056
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.695671 4.554160 7.092673 3.063635 4.857054 12.995873 5.989878 4.359724 6.017538 3.741372 5.701635
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.449605 3.383018 3.118677 3.449574 3.323316 3.659803 5.272967 4.071878 4.959488
[[743]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.840134 22.453931 11.375094 4.285231 5.140398 4.356665 3.402766 3.879898 5.740468 8.787038 8.919839
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.845882 4.513317 7.050076 3.113403 4.925512 12.796953 5.969488 4.192385 5.859735 3.870833 5.811064
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.674676 3.559459 2.926545 3.365616 3.440416 3.604637 5.322560 4.183913 4.672493
[[744]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.926607 22.365102 11.176032 4.062602 5.221757 4.066992 3.462555 3.877391 6.134522 8.817494 9.069652
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.697433 4.671911 7.509227 3.248212 5.447272 12.920590 5.968401 3.697474 5.687940 3.551106 5.800505
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.710370 3.265500 3.293762 3.328368 3.356975 3.640330 4.734283 3.888454 4.862870
[[745]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.279920 22.334154 11.034679 4.173456 4.978009 4.012507 3.433432 3.760925 6.167189 8.339765 9.221104
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.826591 4.468474 7.581500 3.309918 5.179090 13.292699 5.999842 3.851407 5.917594 3.465756 5.515382
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.527764 3.566434 3.043240 3.370377 3.368309 3.902976 4.499873 4.024514 4.677607
[[746]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.896438 22.536343 11.128285 4.114155 4.877980 4.012740 3.586144 3.978229 6.209063 8.276014 8.721827
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.940907 4.341028 7.284931 3.514204 5.163541 13.197746 5.547102 3.545588 6.047669 3.669762 5.498512
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.320466 3.604241 3.182102 3.323269 3.250644 3.939537 5.242763 4.027682 4.799728
[[747]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.218330 22.805479 11.117380 4.137475 4.809857 4.049659 3.253465 3.624266 6.064041 8.654963 8.513843
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.913712 4.477943 7.260546 3.424680 4.911934 13.218459 5.143692 3.777315 5.786820 3.544267 5.606039
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.373106 3.524937 3.412523 3.236095 3.291780 3.600403 5.272915 4.275979 4.806764
[[748]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.791043 22.677571 11.015327 4.361408 4.696735 4.025975 3.481344 3.885594 6.020089 8.401662 8.767982
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.842578 4.484222 7.184095 3.382051 4.808243 13.000683 5.290197 3.819803 5.799509 3.486065 5.871151
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.638094 3.560833 3.377599 3.213016 3.104490 3.864959 5.083839 3.977104 4.835099
[[749]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.382070 22.366425 11.150850 4.217398 4.379111 4.089444 3.573550 3.528219 5.901645 8.207956 8.705976
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.626508 4.589910 7.046589 3.240096 4.733464 13.424546 5.046957 4.127399 6.066831 3.389009 5.651895
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.613341 3.419283 3.350677 3.371823 3.200363 3.633242 5.155748 3.909857 5.169443
[[750]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.729421 22.298967 11.137557 4.132066 4.629160 4.480121 3.866673 3.635540 6.005518 8.186774 8.838095
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.636784 4.315828 7.240017 3.341554 4.804694 13.013983 5.281093 3.770362 6.062217 3.792355 5.513935
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.299714 3.313853 3.282436 3.285938 3.415904 3.690876 4.926434 3.956766 5.142558
[[751]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.862099 22.249326 11.028391 4.212103 4.731300 4.591006 3.753645 3.709452 6.049352 8.018411 8.816016
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.806144 4.310761 7.293701 3.179024 4.793809 13.100995 4.997233 3.760811 6.169967 3.711374 5.403051
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.461654 3.445248 3.144669 3.344598 3.409480 3.682875 5.119341 3.716331 4.996866
[[752]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.000622 22.152432 10.825543 4.198390 4.883029 4.183055 3.687810 3.687183 5.933358 8.605917 8.689935
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.695358 4.225162 7.447361 3.117538 4.529780 13.143265 5.033585 3.706478 5.900739 3.904730 5.366584
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.622236 3.486932 3.147335 3.109707 3.564552 3.754770 4.939304 3.964531 5.056781
[[753]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.769993 22.433034 10.940539 4.037133 4.759006 3.884985 3.743611 3.521164 5.976468 8.245788 8.906968
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.885920 4.270580 7.373190 3.434763 5.072961 12.803823 5.029673 4.175908 5.815040 3.723559 5.095493
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.085217 3.271852 3.139983 2.967910 3.608423 4.012378 5.106238 4.155646 5.018377
[[754]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.926876 22.329495 10.933435 4.006443 4.524057 3.998749 4.090219 3.470271 5.639789 8.281384 8.830992
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.849146 4.134347 7.116846 3.497627 5.078745 12.848362 5.339605 4.045835 5.755236 3.498790 5.318269
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.046653 3.427047 3.300022 3.038817 3.406250 3.825145 5.143873 4.132486 4.811425
[[755]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.753194 21.893074 11.191907 4.065896 4.539666 3.838227 3.959621 3.727761 5.644734 8.045272 9.124167
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.850446 4.240184 7.147395 3.476965 5.170481 12.889434 5.442411 4.235655 5.829197 3.515838 5.560649
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.924037 3.385001 3.512981 2.989503 3.451690 3.688174 4.982509 3.982743 4.512513
[[756]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
13.138556 21.992134 11.003271 3.958411 4.427336 4.017064 3.704420 3.800238 5.766770 8.232956 8.677855
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.090326 4.091356 7.041826 3.605922 5.185723 12.835578 5.459103 4.016239 5.698174 3.477189 5.461333
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.142607 3.535530 3.185328 2.988187 3.324909 3.706276 4.879559 3.957715 4.850741
[[757]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.690460 21.733549 10.636468 4.216265 4.771707 3.982232 3.729811 3.827651 5.833354 8.424469 8.656916
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.963845 4.154929 7.275914 3.545333 5.107358 12.677017 5.313811 4.188478 5.498546 3.506198 5.333204
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.071368 3.609928 3.216454 3.122168 3.368437 3.448947 4.920099 4.001215 4.900227
[[758]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.823405 21.336529 10.622367 4.228842 4.507838 4.200880 3.807652 3.824512 5.911324 8.190584 8.571302
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.975328 4.526733 7.430135 3.556930 4.977614 12.173888 4.937694 4.330218 5.908737 3.686715 4.787210
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.887290 3.665163 3.620979 3.006091 3.459417 3.590555 4.938929 3.858944 4.941704
[[759]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.822373 21.735587 10.752629 4.142497 4.441469 4.216689 3.994486 3.827633 5.851077 8.126022 8.461720
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.071376 4.355638 7.282979 3.717128 4.781379 12.168090 5.378379 4.346477 5.928847 3.745638 5.060929
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.771947 3.372849 3.497447 2.651223 3.235598 3.765263 4.556742 4.024527 4.853818
[[760]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.593020 21.892742 11.114365 4.274174 4.672297 4.098274 3.625528 3.718818 6.136550 8.212014 8.593971
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.113578 4.319270 7.232618 3.454497 4.597348 12.208048 5.550707 4.225370 5.731817 3.717125 4.961732
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.818622 3.476174 3.189953 3.199861 3.383950 3.925935 4.244140 3.870544 4.511591
[[761]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.994913 21.748439 10.931524 4.147610 4.504195 4.320955 3.560873 3.939729 6.378114 8.235503 8.963941
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.849615 4.136094 7.204418 3.403955 5.138507 12.416955 5.594256 4.234373 5.641638 3.764921 4.939574
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.767480 3.341821 3.303319 3.023196 3.277214 3.808164 4.098706 3.742469 4.772672
[[762]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.874949 21.575992 10.835190 4.194020 4.832478 4.500046 3.665194 3.706165 6.087953 8.339511 8.473075
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.923619 4.173141 7.542679 3.302616 4.910506 12.257179 5.502908 4.433049 6.034619 3.549073 4.926916
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.712614 3.071857 3.191887 3.135079 3.253624 3.891299 4.160802 4.122395 4.564755
[[763]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.718426 21.087188 10.912288 4.212582 4.499014 4.731049 3.653376 3.944462 6.211441 8.329285 8.400810
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.003410 4.406604 7.457460 3.254633 5.008108 12.293215 5.519472 4.194387 5.942392 3.577079 4.792659
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.146738 3.205885 3.153428 3.224090 3.237279 3.958183 4.258491 3.939225 4.341393
[[764]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.617557 21.245185 10.763744 4.102988 4.422197 4.563856 3.767485 3.945087 6.460780 8.635989 8.018920
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.962539 4.102577 7.777711 3.380233 4.669931 11.949325 5.616430 4.092656 6.064858 3.620261 4.836491
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.150271 3.322794 3.200115 3.193849 3.235978 4.003518 4.347798 3.840801 4.505281
[[765]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.688174 21.513549 10.843599 3.981996 4.509401 4.378934 4.051585 3.772102 6.597041 8.408321 8.158278
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.003630 4.228509 7.656469 3.292202 4.707372 11.778905 5.325449 4.469152 6.012421 3.657887 4.731207
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.637508 3.476884 3.218511 3.174727 3.183422 3.863761 4.288711 3.729587 4.575776
[[766]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.767780 21.781123 10.741833 4.062157 4.403552 4.581179 3.758225 3.649121 6.281285 7.961991 8.187658
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.921070 4.178993 7.572083 3.413163 4.646466 11.885123 5.279328 4.955032 5.674584 3.701825 4.518124
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.666698 3.262783 3.284024 3.141880 3.426936 3.870686 4.210269 4.072389 4.719916
[[767]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.266479 21.444647 10.536871 4.299508 4.331771 4.364689 3.536045 3.502066 6.292431 7.872979 8.130770
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.981963 4.405130 7.400021 3.362104 4.533961 12.403711 5.473519 4.533499 5.765886 3.940755 4.699567
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.939526 3.353094 3.371583 3.040966 3.448053 3.688115 4.351295 4.198766 4.539620
[[768]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.887195 21.482200 10.945842 4.106540 4.461559 4.174265 3.438286 3.607120 6.116777 8.133262 7.824410
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.072271 4.206364 7.409439 3.373671 4.658612 12.199329 5.197792 4.337304 5.939996 3.926036 4.834242
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.313899 3.223675 3.115393 3.197691 3.239575 3.656819 4.848486 4.042474 4.718316
[[769]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.697275 20.662554 10.936761 4.072171 4.601808 4.461391 3.889087 3.683594 6.259437 8.223537 7.926260
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.763260 4.143114 7.654115 3.307492 4.806078 11.908091 5.223138 4.374068 5.844028 3.810466 4.808599
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.259763 3.159122 3.351536 3.223003 3.348763 3.555765 4.532033 4.167190 4.528367
[[770]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.636309 21.046662 10.571985 4.473130 4.255491 4.147566 3.700068 3.785177 6.120905 8.084643 8.165923
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.114049 3.809441 7.597023 3.343391 4.940985 11.753588 5.267502 4.613271 5.677068 3.951286 4.630492
NKE PFE PG TRV UNH UTX VZ WMT XOM
7.551600 3.160246 3.214540 3.221790 3.444739 3.602031 4.285929 3.971053 4.917558
[[771]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.639783 21.080242 10.582655 4.407152 4.074358 4.208605 3.584153 3.955299 5.984466 7.537776 8.199335
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.658022 3.690110 7.380994 3.283055 4.809392 13.265876 5.236300 4.737498 5.770231 3.785894 4.982051
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.622998 3.201935 3.464592 3.442807 3.558190 3.771461 4.456862 4.221570 4.805521
[[772]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.478499 20.832275 10.625651 4.412211 4.381774 4.414507 3.457007 3.799271 5.999498 7.870231 8.073026
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.784104 3.798914 7.208597 3.198607 4.774941 12.293233 5.240488 4.550430 5.840051 3.714317 4.904177
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.498142 3.256967 3.584975 3.443839 3.323302 3.952309 4.780729 4.083142 4.721706
[[773]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.852465 20.853134 10.706551 4.374488 4.366951 4.455896 3.557687 3.760736 5.459273 7.708834 8.221323
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.551644 3.799649 7.250915 3.136920 4.906048 12.578817 5.345773 4.406849 5.904185 3.615728 5.111371
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.893978 3.311583 3.506557 3.367989 3.353232 3.938784 4.744836 4.023362 4.948330
[[774]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.694212 20.540467 10.754819 4.486538 4.650087 4.443657 3.456620 3.638010 5.643706 8.065419 7.692673
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.619385 3.776632 7.526819 3.074563 5.101568 12.907137 5.465894 4.308756 5.666874 3.514011 5.123172
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.618396 3.233393 3.346413 3.316770 3.468390 3.952650 4.956511 4.194527 4.504973
[[775]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.407120 20.118800 10.816560 4.474192 4.447543 4.581084 3.448629 3.725540 5.777480 7.983831 8.066201
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.517728 3.935744 7.680323 3.091683 4.829794 12.629451 5.508115 4.165639 5.955632 3.823658 5.051957
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.061589 3.179700 3.104244 3.094107 3.611806 3.960799 4.702020 3.975523 4.668408
[[776]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.060022 20.336344 10.684354 4.319350 4.257720 4.924431 3.423577 3.739459 5.743627 7.484692 8.415392
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.584820 3.832538 7.772737 3.161832 4.853994 12.523639 5.587862 4.210303 5.966203 3.845789 4.936806
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.013502 3.145596 3.314322 3.180565 3.527414 3.986360 4.745721 3.822106 4.588098
[[777]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.775553 20.493353 10.584744 4.221827 4.258180 4.541640 3.609287 3.803905 5.749276 7.895998 8.439370
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.895269 3.832405 7.841975 3.362627 4.711377 11.670418 5.244962 4.356385 5.833224 3.757943 4.829813
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.728696 3.094275 3.240064 3.212281 3.495337 4.003313 4.766068 3.980066 4.539246
[[778]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.621704 20.229823 10.714579 4.205387 4.537087 4.843041 3.547510 3.848709 5.832820 7.689081 8.313540
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.732381 3.988059 7.855802 3.327533 4.726298 11.566028 5.243137 4.659555 5.899418 3.785127 4.864370
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.875984 2.866829 3.274332 3.111684 3.385793 3.824698 4.678669 3.925869 4.559353
[[779]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.889009 20.011403 10.567670 4.122985 4.587316 4.210547 3.523552 3.585403 5.742546 7.362743 8.471908
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.700751 4.061803 8.183120 3.145423 4.451323 11.492881 5.143165 4.515833 5.691617 3.722640 4.982674
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.172784 3.171898 3.368169 3.280571 3.726503 4.094308 4.763037 3.897897 4.592540
[[780]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.775654 19.929369 10.515893 4.146863 4.332841 4.336078 3.350152 3.749659 5.735218 7.447847 8.047205
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.882208 4.125146 7.920066 3.240718 4.448695 11.726988 5.119995 4.763434 5.703374 3.485652 5.261420
NKE PFE PG TRV UNH UTX VZ WMT XOM
6.182223 3.176717 3.099639 3.181423 3.611400 4.032259 4.967788 4.133837 4.548168
[[781]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.806379 19.871218 10.617513 4.286477 4.387895 4.166376 3.425933 3.841739 5.580999 7.636606 8.040342
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.857472 4.113817 7.937083 3.237866 4.895827 11.691710 5.168337 4.671313 5.844259 3.495050 5.035485
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.450457 3.387982 3.155207 3.160498 3.582218 3.912485 4.868186 4.077946 4.561861
[[782]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.514598 19.697529 10.506782 4.151663 4.043035 4.379484 3.478476 3.823126 5.673962 7.621921 8.247153
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.668986 4.117109 8.080562 3.093994 4.475905 11.805722 5.127793 4.826968 6.112253 3.551647 5.051239
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.677206 3.495647 3.293222 3.370880 3.440745 3.794824 4.972625 3.521408 4.785876
[[783]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.671847 19.540193 10.681984 4.083148 4.104467 4.145633 3.463456 3.865531 5.652546 7.332214 7.949738
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.498299 4.160637 8.190909 3.207479 4.731828 11.532395 5.142970 4.893033 5.871239 3.680225 5.447290
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.671955 3.326588 3.203486 3.345386 3.637124 3.991201 4.673747 3.890647 4.502481
[[784]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.052907 19.538693 10.501263 4.395234 4.114359 4.108159 3.321110 3.807320 5.368752 7.435462 7.745074
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.542352 3.736145 8.276821 3.157689 4.643815 11.447510 5.236676 4.873336 5.920257 3.611540 5.305802
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.766513 3.512599 3.328394 3.466225 3.476444 3.767699 4.956275 3.973804 4.345801
[[785]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.844032 19.537303 10.397548 4.413694 4.190011 4.098260 3.330395 3.589123 5.574133 7.633269 8.013796
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.676794 3.990016 8.422443 3.027966 4.374520 11.347006 5.194858 4.854355 5.806554 3.716349 5.224464
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.644458 3.412856 3.292570 3.473255 3.554008 3.874771 4.891211 4.053442 4.230516
[[786]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.693913 19.366709 10.098842 4.207656 4.318806 4.187535 3.339190 3.806711 5.615536 7.392623 7.995433
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.183770 4.082484 8.536193 3.248533 4.416709 11.429211 5.152177 4.738820 5.926295 3.566843 4.869608
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.493259 3.347856 3.215834 3.503064 3.504234 4.106923 4.805572 4.079075 4.268192
[[787]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.889384 19.222166 10.392913 4.226961 4.277811 4.305732 3.488282 3.631938 5.675547 7.547914 7.611920
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.972333 4.181504 8.819967 3.131776 4.387643 11.517769 4.764760 5.017876 5.954944 3.450391 4.761348
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.482822 3.365000 3.313491 3.247569 3.464489 3.807350 4.868885 3.748682 4.347001
[[788]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.974711 19.128725 10.090394 4.097288 4.223199 4.229639 3.375788 3.625091 5.717324 7.657736 7.721021
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.483374 4.583117 8.601012 3.005832 4.541112 12.161083 4.853246 5.061150 5.610130 3.504455 5.005204
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.119249 3.258588 3.148169 3.568110 3.494307 3.866779 5.082808 4.142328 3.886758
[[789]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.872328 19.195732 9.855307 3.894317 4.230632 4.037907 3.373155 3.512967 6.126653 8.032494 7.185929
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.568597 4.249999 8.453742 3.222857 4.517827 12.277958 4.824681 4.892690 5.679235 3.415006 4.631675
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.143377 3.401521 3.186719 3.410420 3.562094 3.990399 5.053524 4.339485 4.421344
[[790]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.134866 19.173785 9.609012 4.034892 3.975138 4.165152 3.414847 3.723497 5.695268 8.111014 7.749044
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.306586 4.692330 8.473140 3.078583 4.403669 11.579789 4.889716 4.882349 5.760081 3.560560 4.559737
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.190903 3.302692 3.546953 3.723492 3.434704 4.053900 5.098327 4.270015 3.989534
[[791]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.012951 19.051623 9.978277 4.178739 4.100240 4.275458 3.517047 3.517925 5.840815 8.195022 7.035751
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.430418 4.486045 8.286400 3.073590 4.531682 12.062898 4.740076 4.895059 5.786140 3.372180 4.706830
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.349991 3.201762 3.603801 3.346413 3.383801 4.068463 5.112470 4.226343 4.099103
[[792]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.838926 19.363634 9.989394 4.077645 4.001909 4.176147 3.601488 3.733028 5.898526 8.256540 7.310416
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.219158 4.009918 8.023525 3.036818 4.360379 12.148809 4.580464 5.098408 5.965887 3.497265 4.512741
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.310892 3.390288 3.634105 3.392016 3.389458 3.722653 5.117162 4.392453 4.273490
[[793]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.222261 18.818482 10.263781 4.068008 4.750476 4.632130 3.411257 3.695624 5.721635 8.344710 7.066362
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.374708 4.296238 8.116978 2.961582 4.054729 12.095019 4.769504 4.783490 6.133543 3.451857 4.314777
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.937719 3.406954 3.441468 3.280086 3.691361 3.984682 4.759192 4.178195 4.058449
[[794]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.938544 19.121847 10.371878 4.077893 4.854713 4.538957 3.164865 3.805067 5.851309 8.183418 7.355416
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.333864 3.888138 8.199884 3.021335 4.167363 11.454366 4.594086 4.859321 6.230711 3.635370 4.248020
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.152917 3.306348 3.585756 3.304717 3.740337 3.797355 5.038967 3.872602 4.338641
[[795]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.006707 19.276230 10.316258 4.020040 4.996952 4.734155 3.021483 4.224911 5.922190 7.693420 7.530785
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.463023 4.359302 8.146068 3.187011 4.095021 10.987815 4.540571 4.997090 5.916517 3.468783 4.250374
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.087889 3.330583 3.519377 3.399861 3.635745 3.864265 4.960705 3.895146 4.115439
[[796]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.768630 19.338584 10.375125 4.065421 4.712625 4.713061 3.351916 4.064185 6.171868 7.358513 7.763139
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.323569 3.834611 7.916878 3.174044 4.197932 11.121250 4.573160 5.139465 5.866874 3.625258 4.173719
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.072774 3.481231 3.232584 3.157626 3.739398 3.690231 5.187819 3.936410 4.420749
[[797]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.688257 19.191585 10.353529 4.143524 4.732719 4.541148 3.105498 4.034124 5.980945 7.451776 7.642415
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.412633 3.733237 7.861870 3.201358 4.576854 11.169294 4.723287 5.000924 6.010942 3.791566 4.193799
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.966094 3.327354 3.351170 3.180323 3.763905 3.842230 5.282615 3.851638 4.384560
[[798]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.571182 19.346972 10.075542 4.085060 4.766866 4.637004 3.063837 3.934804 5.858481 7.650514 7.693830
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.507015 3.433860 8.002360 3.319308 4.458428 11.067142 5.003094 5.049199 5.861625 3.415710 4.431863
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.994139 3.404463 3.413278 3.174477 3.667855 3.842041 5.677224 4.001678 4.331291
[[799]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.859638 19.172548 10.393330 4.188001 4.719824 4.514966 3.308964 3.682387 5.622069 7.531681 7.646140
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.541241 3.294483 8.075236 3.140590 4.182695 10.906681 4.746237 5.125066 5.987082 3.625484 4.628395
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.161890 3.173879 3.512220 3.379487 3.602258 3.854324 5.625334 3.841868 4.450813
[[800]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.500588 19.393679 10.338601 4.121493 4.605374 4.346639 3.446217 3.794589 5.845703 7.594089 7.818245
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.590213 3.739183 8.053669 3.368207 4.332574 10.626417 4.576845 4.869327 5.880008 3.563726 4.540226
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.830892 3.190745 3.895188 3.305254 3.414898 3.894296 5.569509 4.032211 4.314371
[[801]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.506777 19.171153 10.538150 4.005523 4.690064 4.191492 3.320025 3.782047 5.761777 7.567129 7.707318
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.702176 3.948685 8.610946 3.129128 4.536511 10.566476 4.552786 4.948638 6.095674 3.592552 4.458141
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.712998 3.077528 3.860133 3.413923 3.472775 3.968902 5.177771 3.984945 4.364479
[[802]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.012819 19.117090 10.683527 4.072870 4.430489 4.219698 3.444472 3.675572 5.680382 7.367631 7.782506
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.575075 3.983841 8.671458 3.079634 4.533771 10.418815 4.330593 5.066166 6.085234 3.750214 4.822791
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.458375 3.135393 3.616621 3.341159 3.457863 3.664773 5.189563 4.105771 4.347413
[[803]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.758954 19.061391 10.485169 4.248972 4.549367 4.267096 3.385064 4.038208 5.920593 7.178829 7.910753
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.652568 3.895647 8.615763 2.936754 4.260970 10.590558 4.574462 4.830308 6.071181 3.671978 4.715922
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.305003 3.451375 3.538865 3.635132 3.493951 3.982194 4.977965 3.829855 4.291852
[[804]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.913896 18.815341 10.700632 4.131016 4.750112 4.265566 3.291990 3.966482 5.713141 7.505648 8.100617
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.677269 3.823520 8.799062 2.966570 4.346420 10.131459 4.536999 4.898565 6.227449 3.563955 4.659411
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.318464 3.174729 3.518080 3.644923 3.383951 3.936953 4.995194 3.875138 4.262211
[[805]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.806143 19.388602 10.278551 3.956210 4.637338 4.290111 3.469124 4.176054 5.911649 7.481631 8.047781
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.739937 3.754932 8.619323 2.994443 4.541735 10.229860 4.530438 4.756633 5.866577 3.543466 4.431374
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.698874 3.093494 3.819154 3.737544 3.464397 4.001911 4.813514 3.642320 4.238951
[[806]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.327565 19.386184 10.872460 4.042808 4.675982 4.165159 3.190619 3.962581 6.091778 7.365370 8.348369
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.762039 3.618969 9.115605 3.036787 4.273641 10.467599 4.744978 4.553973 5.332947 3.340477 4.491328
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.700303 3.257718 3.668515 3.307459 3.392621 4.122385 4.751317 3.896621 4.559538
[[807]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.703575 19.349246 10.577690 4.070985 4.631671 3.890981 3.209956 3.883890 5.971747 7.276095 7.811094
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.538430 3.868789 8.593421 3.062466 4.458215 10.715263 4.628630 4.742518 5.486193 3.441477 4.595868
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.362847 3.410982 3.611829 3.325462 3.646060 4.188914 5.130317 4.003320 4.775245
[[808]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.544945 19.421510 10.539618 4.057846 4.385744 4.046675 3.165034 4.056428 6.067299 7.145324 7.994047
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.690650 3.983916 8.650059 2.918791 4.563190 10.783719 4.444771 4.750337 5.555968 3.513177 4.406041
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.406222 3.181903 3.646407 3.519294 3.856756 4.187554 4.928348 4.030551 4.462467
[[809]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.746184 18.793073 10.394675 4.254366 4.654394 3.925823 3.358518 3.895866 5.799884 7.356914 7.798075
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.694564 3.873072 8.649385 3.156509 4.330992 10.342690 4.767858 4.880305 5.493281 3.538178 4.719510
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.384902 3.437532 3.498568 3.561932 3.509053 3.970098 4.915675 3.945791 4.951565
[[810]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.712861 18.866332 10.497375 4.195825 4.625599 3.976045 3.306178 3.835706 5.477181 7.433305 7.525775
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.654298 3.803106 8.504103 3.152390 4.622537 10.548803 4.678575 4.796460 5.516978 3.439958 4.818069
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.491080 3.199098 3.650372 3.838291 3.408008 4.087864 5.001654 4.099269 4.610285
[[811]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.116259 18.996932 10.539639 4.304005 4.577421 4.094793 3.385342 3.967925 5.662699 7.227257 7.725496
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.522701 3.921169 8.606545 3.045251 4.514049 10.226235 4.342964 4.872003 5.493547 3.332946 4.692855
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.449980 3.297341 3.515438 3.807402 3.522600 4.171437 4.815578 4.123623 4.562291
[[812]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.612106 18.922247 10.467883 4.129021 4.813113 4.034101 3.200916 3.994479 5.918517 7.141774 7.952143
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.630672 3.793351 8.623779 3.111170 4.463160 9.944461 4.433782 4.629854 5.794636 3.642200 4.473253
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.638699 3.221010 3.657316 4.026538 3.459149 4.061722 4.491555 4.231304 4.605199
[[813]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.663998 18.921279 10.650601 3.983139 4.629689 4.066391 3.372748 3.940687 6.042527 7.268965 7.977236
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.566588 4.037457 8.237253 3.009825 4.361282 10.023819 4.461772 4.582874 6.015671 3.744334 4.353881
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.706694 3.373631 3.606547 4.335714 3.364547 4.116628 4.308126 3.947100 4.412423
[[814]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.541939 18.631106 10.682589 4.007349 4.714050 3.828727 3.407417 3.894216 6.249179 6.999583 7.719195
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.655004 3.872774 8.191221 3.011733 4.347095 9.830194 4.297686 4.647550 5.903750 3.838761 4.284097
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.902099 3.466795 3.715364 4.109607 3.626277 4.572451 4.394492 3.797440 4.373168
[[815]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.554329 19.121649 10.542295 3.791122 4.705791 3.965050 3.387954 3.688602 6.008660 6.824579 7.537212
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.586321 3.742063 8.478742 3.140232 4.528787 9.550981 4.258359 4.821587 6.078764 3.731981 4.435997
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.926450 3.491487 3.710183 4.163831 3.551902 4.495741 4.123762 4.091602 4.532488
[[816]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.438517 18.773732 10.489591 3.875710 4.840789 4.010700 3.402503 3.679244 5.711465 7.490275 7.451289
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.628595 3.725988 8.289463 3.041584 4.309516 9.734956 4.196012 4.850845 6.239975 3.753573 4.373258
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.899355 3.384098 3.694835 4.179127 3.536519 4.411536 4.496587 4.012568 4.612910
[[817]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.693913 18.915997 10.507541 3.943622 4.565123 4.242716 3.647241 3.697393 5.881583 7.518173 7.461730
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.605937 3.949664 8.279408 2.995344 4.263079 9.917939 4.313118 4.748959 5.947709 3.998571 4.269376
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.639193 3.342313 3.699269 4.127903 3.484357 4.243332 4.466614 3.867924 4.375790
[[818]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.768176 18.516816 10.596169 4.311984 4.595721 4.146016 3.277727 3.812611 5.865332 7.667407 7.611499
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.649529 3.944522 8.539732 3.121606 4.125398 9.714418 4.324632 4.715936 6.031749 3.705831 4.339028
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.528131 3.272123 3.862776 4.287734 3.584023 4.195387 4.296053 3.946385 4.180786
[[819]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.442491 18.531940 10.526615 3.826513 4.632410 4.044036 3.275359 3.757572 6.310647 7.245290 7.686164
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.753574 3.566176 8.840672 3.163344 4.013907 9.881160 4.832409 4.694890 5.638655 4.059858 4.109465
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.775712 3.196046 3.740425 4.192433 3.782741 4.290810 4.159893 4.129558 4.374549
[[820]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.228082 18.722186 10.373588 3.732558 4.799154 4.274732 3.405804 3.904753 5.923645 7.685793 7.640883
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.773982 3.846051 8.583923 3.085429 4.051698 9.901475 4.834486 4.972627 5.643653 3.574853 4.070864
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.649475 3.233326 3.571796 4.414061 3.656187 3.939358 4.453031 3.977401 4.270244
[[821]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.470497 18.879298 10.310662 3.799670 4.579616 4.500704 3.149112 3.943532 6.249678 7.215893 7.735279
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.566624 3.698712 8.279152 3.148487 4.262955 10.167068 4.696365 4.978364 5.605894 3.428756 4.463034
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.551866 3.146463 3.393797 4.267328 3.592276 4.148958 4.530500 3.779043 4.662262
[[822]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.357337 18.869722 10.207826 3.677866 4.573491 4.485161 3.096091 3.936212 6.146035 7.376727 7.636628
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.311694 3.796083 8.145343 2.987271 4.164156 10.202665 4.732777 5.143584 5.436338 3.564017 4.463754
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.694688 3.117545 3.577447 4.569468 3.513908 4.185648 4.668118 3.834138 4.556422
[[823]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.433032 18.772293 10.213336 3.578619 4.531446 4.722074 3.244033 3.912759 6.141785 7.414046 7.494301
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.416613 3.673299 8.148249 3.110203 4.111947 10.141005 4.565557 5.154549 5.527449 3.617748 4.340818
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.681753 3.320043 3.317819 4.446744 3.482569 4.408074 4.558461 3.862200 4.512103
[[824]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.042881 19.001642 10.277822 3.895511 4.745132 4.265015 3.181327 3.730198 6.178306 7.353380 7.446157
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.481963 4.039063 8.294378 3.250755 4.316925 10.121887 4.868199 4.839460 5.415984 3.544792 4.306145
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.491378 3.096711 3.492717 4.292169 3.656141 4.359421 4.622076 3.750139 4.349734
[[825]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.238444 18.920673 10.650597 3.726549 4.840377 4.452946 2.994626 3.701502 6.217120 7.558908 7.263616
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.496516 3.867787 8.075172 3.121529 4.565902 9.881701 4.825371 4.819656 5.467353 3.834913 4.280460
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.294190 3.358598 3.687983 4.432123 3.378966 4.143911 4.684688 3.891682 4.081657
[[826]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.570595 19.129539 10.700258 3.993806 4.506327 4.550944 2.990687 3.695848 6.412986 7.819867 7.115999
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.535410 3.729402 8.240390 3.321224 4.377829 9.678522 4.929054 4.785864 5.575553 3.552879 3.893619
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.522529 3.180121 3.384369 4.271908 3.234037 4.277255 4.693435 3.708033 4.278841
[[827]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.933774 18.270458 10.443852 3.837578 4.523328 4.711910 3.172712 3.517535 6.594163 7.610577 7.275878
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.527624 3.768086 7.974206 2.872118 4.309892 10.172938 4.463085 5.041582 5.770394 3.527234 4.006220
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.576453 3.159580 3.748711 4.376321 3.183455 4.367093 4.470040 3.958381 4.201687
[[828]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.762151 18.745138 10.326750 4.142849 4.588439 4.443729 3.190844 3.882829 6.575247 7.522218 7.151277
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.449342 3.631646 8.507762 3.051599 4.081686 9.772019 4.540338 5.012590 5.692916 3.503204 3.665787
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.661634 3.278662 3.629175 4.584080 3.428957 4.540561 4.369737 4.035022 3.986106
[[829]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.268860 18.800283 10.907116 3.984492 4.581998 4.472182 2.931087 3.994432 6.489575 7.323338 7.262138
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.373482 3.909489 8.783291 3.198048 3.934527 9.817752 4.387673 4.800261 5.761521 3.629672 4.074531
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.493811 3.319671 3.691302 4.503629 3.417277 4.369147 4.419254 3.924183 3.781527
[[830]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.342778 18.945466 10.854958 4.262247 4.414897 4.653354 2.950416 4.078496 6.330817 7.160053 7.348315
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.490821 4.003450 8.434846 3.092266 4.092732 9.794273 4.248592 4.992148 5.756494 3.389910 4.225911
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.610052 3.280532 3.475815 4.626249 3.134689 4.428765 4.485706 4.096142 3.663813
[[831]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.344316 18.791122 10.635056 4.206086 4.388167 4.655644 2.969985 3.747342 6.287846 7.225287 7.502741
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.459106 3.785944 8.561486 3.207961 3.972478 9.953178 4.244685 5.249536 5.938074 3.433627 4.184530
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.541482 3.087006 3.492209 4.618887 3.267110 4.569005 4.341601 4.046567 3.894879
[[832]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.042000 18.943695 10.603968 4.145968 4.121096 4.531791 3.017493 3.696147 6.315711 7.075641 7.500170
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.552492 4.024368 8.771746 3.246108 3.864607 9.884512 4.112487 5.140394 5.827477 3.528890 4.081320
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.764768 3.180062 3.612520 4.578292 3.342238 4.524946 4.394869 4.045782 3.918056
[[833]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.074797 19.026861 10.701551 4.184637 4.311710 4.707670 3.046025 3.419047 5.898275 6.948709 7.163939
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.653408 4.077865 8.545329 3.099778 4.174506 9.877323 4.084160 5.317425 5.958789 3.498717 3.758445
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.802215 3.370811 3.817028 4.640819 3.462830 4.567906 4.805308 3.955620 3.738044
[[834]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.287876 19.369436 10.591022 4.248670 4.331977 4.944247 3.175537 3.536006 5.943103 6.868587 7.222697
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.795746 3.890437 8.853704 3.014967 4.068879 9.438866 3.961108 5.315655 5.941603 3.361377 3.776571
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.789186 3.286394 4.038435 4.787436 3.402355 4.385816 4.729473 3.763921 3.643699
[[835]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.377137 19.338250 10.430976 4.243106 4.284011 4.499571 3.097636 3.462678 5.994789 6.866297 7.167407
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.800074 4.153011 8.767943 3.069344 4.026686 9.473573 3.821391 5.276783 5.822613 3.389368 4.126014
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.737315 3.255496 3.838069 5.144377 3.481054 4.473691 4.733299 3.748834 3.622274
[[836]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.600921 19.510744 10.355887 4.170840 4.200195 4.754780 2.974035 3.682478 5.371612 6.704234 7.025814
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.699377 4.210412 8.508758 3.021385 4.149929 9.616319 3.932709 5.264520 5.892725 3.573973 3.964235
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.846759 3.500212 4.069471 4.701976 3.351509 4.379631 4.922361 3.926996 3.792358
[[837]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.055087 19.577842 10.355534 4.175714 4.121301 4.589425 2.987906 4.003626 5.327585 6.690313 7.139833
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.880768 4.251025 8.213384 3.006008 3.927302 9.069414 3.987473 5.245952 5.855160 3.644965 4.017577
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.789223 3.638686 4.018585 4.568373 3.421678 4.416173 5.009300 3.681799 3.820373
[[838]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.602033 19.297787 10.363867 4.225437 4.100441 5.094817 3.133322 3.701165 5.563506 6.776704 6.763443
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.624358 4.153971 8.683496 3.124789 4.150073 9.212732 4.038312 5.237223 5.736574 3.766810 4.176695
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.119563 3.460721 4.052251 4.808646 3.649187 4.259272 4.991950 3.485021 4.119850
[[839]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.805567 19.054961 10.145398 3.846458 4.368627 4.533473 3.097174 3.947475 5.247301 6.658596 6.975959
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.742966 3.915987 8.812815 3.088918 4.198195 9.090869 4.017081 5.434006 5.975909 3.657202 4.390906
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.707731 3.336345 3.926420 4.817575 3.489244 4.386540 5.337919 3.565451 4.027579
[[840]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.852178 18.934633 10.382620 3.741048 4.412842 4.811882 3.222079 3.695440 5.731744 6.854389 6.775520
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.657087 4.028630 8.216942 3.464852 4.200654 9.258191 4.250660 5.423221 6.150763 3.500994 4.447416
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.595687 3.442879 3.860079 4.718375 3.412669 4.343175 4.912452 3.688288 3.945918
[[841]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.436817 18.923989 10.332642 3.926096 4.453359 4.633787 3.337547 3.910427 6.171921 6.453038 6.771353
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.916610 4.003946 8.604239 3.245373 4.141000 9.230284 4.272633 5.087006 6.046889 3.617246 4.130219
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.450548 3.365687 3.803674 4.882001 3.493494 4.446261 5.012366 3.746531 4.028476
[[842]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.189685 19.390339 10.146065 4.222720 4.150422 4.626814 3.344640 3.615397 6.209551 6.647942 6.789898
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.971310 3.989659 8.914572 3.312295 4.039100 9.053627 4.482877 5.186424 5.774148 3.625791 4.035705
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.542617 3.370529 3.783863 4.591643 3.685452 4.199333 5.420822 3.712867 4.019077
[[843]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.148681 19.368523 9.956939 3.963997 4.275915 4.482422 3.481357 4.012155 6.283952 6.800038 6.642568
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.756573 4.255086 8.815567 3.291148 4.217089 9.483219 4.545077 5.057478 5.894710 3.716638 4.068703
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.272784 3.196733 3.613786 4.754092 3.365969 4.172458 5.301694 3.866354 4.090530
[[844]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.842289 19.026055 10.022359 3.837530 4.155424 4.643999 3.491589 4.402541 6.350919 6.459134 6.772496
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.801931 4.335030 9.128235 3.360691 4.264695 9.638372 4.269767 5.253158 6.018106 3.503500 4.163393
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.282975 3.258734 3.737785 4.677755 3.591859 4.050945 5.260597 3.563469 4.117636
[[845]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.095003 19.371881 9.892532 3.646423 4.253622 4.338256 3.279032 4.336368 6.209392 6.830896 6.719908
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.952538 4.443297 9.200065 3.407428 4.339064 9.612634 4.280511 4.970392 5.982734 3.554781 3.937168
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.202454 3.315578 3.667078 4.576310 3.549681 4.223026 5.245587 3.954859 3.928135
[[846]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.445022 19.449761 9.752088 3.247761 4.791695 4.405498 3.302337 4.227480 6.752353 7.179033 6.526964
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.749569 4.148503 9.022204 3.132874 4.088793 9.923076 4.395458 5.212816 5.613150 3.485890 4.224958
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.450322 3.474981 3.709810 4.600417 3.667777 4.307177 5.320828 3.868749 3.706876
[[847]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.757457 19.175957 9.932407 3.397511 4.590919 4.078882 3.523702 4.287708 6.916568 6.911909 7.017686
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.532822 4.254293 8.948844 3.182527 4.187969 9.817260 4.455944 5.012438 5.716329 3.672638 4.081942
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.661938 3.422573 4.041241 4.728028 3.512915 3.784875 5.091724 3.848743 3.728017
[[848]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.761965 19.571122 9.658049 3.519023 4.642985 4.206106 3.579900 4.592817 6.762084 6.733590 6.881083
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.023686 4.459117 9.007007 3.315039 4.341664 9.873042 4.577914 4.981226 5.567605 3.562218 3.949943
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.457749 3.426866 3.956903 4.233307 3.397130 3.863258 5.031204 3.532637 3.837123
[[849]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.623547 20.347930 9.963591 3.343162 4.622791 4.057977 3.557827 4.389079 6.673033 6.657557 7.058481
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.761845 4.136273 8.879734 3.381237 4.269028 9.858209 4.333816 4.941154 5.411249 3.664242 3.888827
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.642663 3.344851 4.114101 4.515376 3.457579 3.976063 4.933632 3.783801 3.738208
[[850]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.664280 20.206335 10.064051 3.328977 4.555307 4.126356 3.735678 4.472612 7.076181 6.794037 6.704520
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.600250 4.237301 8.673139 3.145109 4.147250 9.439716 4.534783 5.272755 5.194114 3.867727 3.925584
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.538135 3.317468 4.241203 4.532853 3.457274 4.040066 4.857352 3.622503 3.929586
[[851]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.603020 20.158487 9.976153 3.575488 4.706988 4.366195 3.609825 4.362477 6.859739 7.210874 6.650145
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.787595 4.261498 8.199749 3.075971 4.388907 9.311166 4.405012 5.256355 5.180490 3.888117 4.029968
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.798870 3.369665 4.340760 4.533432 3.523950 4.080541 4.778479 3.584456 3.601562
[[852]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.704275 19.974486 9.759630 3.649970 4.857391 4.185734 3.604734 4.711014 7.307815 6.831333 6.976925
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.492899 4.066687 8.376418 2.955775 4.355085 9.428336 4.207958 5.202369 4.921020 3.832114 4.229447
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.539536 3.297113 4.551269 4.563307 3.685178 4.021925 4.918206 3.559798 3.575087
[[853]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.408120 20.333152 10.012720 3.583196 4.920186 4.139163 3.285211 4.416339 7.046301 6.451757 6.408939
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.702035 4.332398 8.567713 2.868036 4.241662 9.300199 4.385205 5.290378 5.223432 3.676211 4.407890
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.360446 3.337007 4.425164 4.816272 3.886920 3.981838 5.091516 3.486620 3.706456
[[854]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.484378 20.400918 9.742638 3.706393 4.288977 4.034851 3.501620 4.439301 7.109626 6.745229 6.452319
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.550096 4.187139 8.520927 2.953589 4.313361 9.809987 4.312853 5.069008 5.104605 3.726298 4.502767
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.492539 3.423068 4.388252 4.878927 3.908978 4.038322 4.905318 3.455456 3.760747
[[855]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.542320 20.149363 9.829914 3.586069 4.317945 4.042576 3.580668 4.354763 6.952034 6.551927 6.561890
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.509884 4.253997 8.565971 3.037823 4.040525 9.935868 4.562879 5.370691 5.085264 3.935412 4.408906
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.382546 3.455265 4.338052 4.703318 3.790807 4.028584 4.957751 3.684883 3.701741
[[856]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.486137 20.088362 10.033460 3.617317 4.452214 4.057253 3.736591 4.262789 6.983924 6.498631 6.560668
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.756729 4.125956 8.231532 3.080875 4.425556 9.928055 4.220164 5.136453 4.989293 3.909964 4.162005
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.443144 3.358118 4.605604 4.731287 3.859054 4.233127 4.806680 3.526647 3.808098
[[857]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.678589 19.949623 10.177542 3.543302 4.791329 4.379720 3.429035 4.352420 6.794589 6.594510 6.483493
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.196189 4.195695 8.147041 3.056408 4.172147 9.629055 4.325940 5.067829 4.758239 3.921425 3.990837
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.461155 3.103132 4.559079 4.789131 3.718877 4.213082 5.015793 3.671304 3.686697
[[858]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.391129 20.111844 10.245980 3.786377 4.572606 4.279934 3.518140 4.554765 6.998095 6.378692 6.394305
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.825831 4.263622 8.131747 2.961388 3.996870 9.175261 4.494540 5.274609 4.951122 3.889180 3.968392
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.225039 3.105964 4.807796 4.976227 3.695773 4.159853 4.800582 3.970521 3.764905
[[859]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.230735 19.904789 10.218824 3.678470 4.488406 4.426053 3.760478 4.348271 6.604030 6.202146 6.291022
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.116785 4.119864 8.399542 2.945971 4.136171 8.955741 4.780953 5.534707 5.258962 3.912437 4.038319
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.075740 3.148320 4.757331 5.027614 3.693170 4.375720 4.806175 3.923432 3.582260
[[860]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.575004 19.518633 10.289086 3.565956 4.727836 4.517061 3.810319 4.647295 6.819881 6.753687 6.288265
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.984033 3.908175 8.422920 3.039728 3.841091 8.984447 4.542371 5.431388 5.135331 3.578472 3.877844
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.245859 3.349799 4.740854 4.921898 3.674092 4.082733 4.789658 3.922162 3.550764
[[861]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.862786 19.651320 9.991774 3.505483 4.753710 4.255000 3.723400 4.572240 6.570566 6.500899 6.056773
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.917970 4.260351 8.313190 2.934011 4.026305 9.015120 4.557276 5.349597 5.297835 3.670256 4.244873
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.353869 3.198214 4.750080 4.680254 3.960927 4.243999 4.758025 3.782619 3.706025
[[862]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.871027 19.484165 10.104984 3.762344 4.427648 4.582296 3.813169 4.406467 6.967210 6.390822 5.870816
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.971210 4.186585 8.278288 3.117506 4.120064 8.926304 4.273362 5.439299 5.134436 3.748708 4.350512
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.376289 3.110861 4.848988 4.955640 3.820445 3.909800 4.967694 3.765909 3.628099
[[863]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.187850 19.539462 10.192772 3.533489 4.559376 4.500337 3.842419 4.510287 6.863739 6.379563 5.974518
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.905043 3.989994 8.651786 3.127892 3.947298 8.876857 4.475450 5.346412 5.339767 4.043861 3.969376
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.277682 3.107099 4.662651 4.689378 3.751346 3.887418 4.710875 3.828882 3.738667
[[864]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.006066 19.549598 9.930252 3.269321 4.453332 4.454539 3.797446 4.739972 6.876644 6.315955 5.854250
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.142408 4.016625 8.280859 3.008601 3.752846 9.055892 4.672481 5.417313 5.066340 3.983945 4.108343
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.188550 3.039550 4.620657 5.082090 4.072298 3.897316 4.976193 3.881418 3.856271
[[865]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.958998 19.412918 10.134288 3.455417 4.477035 4.134345 3.588562 4.404795 7.372743 6.304452 5.959288
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.094606 3.807367 8.103167 3.099292 3.804617 9.088650 4.583049 5.391362 5.365597 3.786756 4.046333
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.169586 3.191309 4.720881 4.927685 4.213449 3.831983 5.222258 3.598674 3.782793
[[866]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.770466 19.446196 10.636314 3.120017 4.523386 4.496343 3.327124 4.432246 7.210588 6.081586 5.753311
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.133671 4.241349 8.145934 3.227318 3.951625 9.016145 4.417492 5.377958 5.130582 3.930601 4.270891
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.284052 2.934446 4.783777 5.135151 3.894883 3.590645 5.258021 3.809494 3.804236
[[867]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.814724 19.357639 10.515340 3.529467 4.804715 4.366208 3.330938 4.035265 7.557036 6.334817 5.677726
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.592994 4.060091 8.223748 3.021597 3.848223 8.559202 4.447605 4.987008 5.286535 4.052184 4.092395
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.560180 3.231377 4.794458 4.819118 4.130047 3.649008 5.335001 3.629330 3.728908
[[868]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.898868 19.745891 10.555464 3.524613 4.744445 4.316691 3.326610 4.264111 6.818052 6.471734 5.413688
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.404203 4.269096 8.089525 3.174663 3.672722 8.651639 4.366591 5.216956 5.302430 3.970539 4.043098
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.419787 3.267209 4.858919 4.889370 4.042558 3.684456 5.590335 3.632325 3.609036
[[869]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.475584 19.462855 10.717045 3.541246 4.953136 4.242159 3.510370 4.386123 6.390885 6.180385 5.366706
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.544055 3.993823 8.116575 3.135477 3.715214 9.140791 4.355015 5.416580 5.139850 4.124508 3.972978
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.360891 3.392461 4.851359 5.263009 3.990957 3.552136 5.859355 3.562057 3.622735
[[870]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.419310 19.288365 10.809842 3.386009 4.671969 4.598436 3.455460 4.279621 6.866781 6.007136 5.331612
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.372542 4.176075 8.238383 2.914234 3.993696 8.770606 4.418056 5.356948 5.107027 4.107890 3.786090
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.346949 3.347094 4.866001 5.276488 3.921065 3.746510 5.713311 3.621131 3.759412
[[871]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.486750 18.908106 10.807127 3.549193 4.781924 4.334708 3.441813 4.162371 6.678981 6.208886 5.293659
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.566107 4.325061 8.021552 3.165981 3.987062 8.894656 4.333294 5.437868 5.071989 3.985187 4.024236
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.416162 3.479908 4.834340 5.278298 3.841171 3.674186 5.723117 3.652008 3.651166
[[872]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.267137 18.977875 10.726502 3.642349 4.592022 4.170862 3.383475 4.187392 6.121786 6.416420 5.532512
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.615421 4.389791 8.050024 3.098539 3.971725 9.051173 4.213383 5.205774 4.826108 3.975803 3.854237
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.621223 3.377853 4.706652 5.323939 3.932610 3.542825 5.663597 3.713009 3.904562
[[873]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.591180 19.196818 10.696890 3.666474 4.662266 4.245965 3.601810 4.259053 6.485934 5.599017 5.405783
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.719392 4.411018 8.295259 3.214173 3.948091 8.895074 4.099019 5.297689 5.217308 3.966103 3.938455
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.444427 3.574434 4.796172 5.136299 4.219285 3.645032 5.511688 3.545218 3.822210
[[874]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.530721 18.789183 10.534080 3.952022 4.848983 4.313395 3.630581 4.026919 6.698683 5.878229 5.725911
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.464728 4.368570 8.423470 3.058414 3.904168 9.171337 4.020015 5.625568 5.039957 3.974194 3.926517
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.267093 3.330039 4.774069 5.276051 4.017954 3.732030 5.445490 3.564615 3.760051
[[875]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.454615 19.125747 10.468103 3.830245 4.691273 4.034845 3.466494 4.211883 6.604220 6.261163 5.572083
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.572469 4.372018 8.428563 3.126843 3.984935 9.176096 4.194321 5.399921 5.098778 3.808052 3.926771
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.012013 3.451682 4.695324 5.529496 3.913025 3.869494 5.198191 3.613763 3.820768
[[876]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.387190 18.943859 10.735732 3.800895 4.529082 4.330118 3.539125 4.055367 6.624828 6.293287 5.475469
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.440425 4.250587 8.539086 2.831018 3.999395 9.138052 4.117005 5.414132 5.400839 3.951396 3.846849
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.357575 3.496772 4.634790 5.542487 3.890686 3.963616 5.102522 3.444726 3.943544
[[877]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.574841 18.689590 10.734496 4.052581 4.337790 4.114870 3.453745 4.044468 6.939185 5.817384 5.686591
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.640151 4.214408 8.582210 2.995635 4.087670 8.891998 4.029703 5.329592 5.390980 3.878307 3.647844
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.478854 3.400880 4.698629 5.151394 3.762269 4.106088 5.361661 3.801374 4.138683
[[878]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.865156 18.274714 11.059428 3.966491 4.272524 4.345699 3.504415 4.211167 6.827101 5.951579 5.784393
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.778593 4.197948 8.272914 3.051843 3.883913 9.107189 4.086219 5.168002 5.282456 3.796635 3.550212
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.499980 3.442294 4.460309 4.940193 3.916078 4.090423 5.347156 3.813257 4.191366
[[879]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.868232 18.614772 10.713946 3.770011 4.322449 4.389664 3.304797 3.870991 7.052809 5.657662 5.756132
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.710546 4.612732 8.528212 3.123735 4.060077 9.345142 3.735430 5.191819 5.395542 3.560887 3.886287
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.345319 3.329091 4.607864 4.963286 3.725691 4.243924 5.033730 3.720755 4.431125
[[880]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.532454 18.823375 10.703092 3.962075 4.232277 4.198016 3.670816 4.414818 6.804032 5.472962 5.907174
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.573782 4.335419 8.731093 3.269344 4.068782 9.101393 4.097302 5.226053 5.654233 3.884075 3.677721
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.239396 3.299135 4.513400 4.689929 3.725214 4.203009 5.134775 3.612005 4.190498
[[881]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.492981 18.883349 10.340921 3.934621 4.398824 4.226368 3.550793 4.231526 6.635475 5.934065 5.773235
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.644055 4.174107 8.569776 3.131186 4.076426 9.184904 4.210226 5.478560 5.516554 3.836594 4.036198
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.097107 3.215680 4.457769 4.630998 3.804470 4.325658 5.409144 3.646629 4.070826
[[882]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.127778 18.976068 10.826957 3.785333 4.183845 4.489872 3.588820 4.062758 6.822668 6.166083 5.646783
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.286731 4.400288 8.925621 3.052440 4.063489 8.826357 4.302749 5.100152 5.369412 3.721461 4.103262
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.298989 3.231775 4.369996 4.780273 3.573050 4.495096 5.832234 3.690824 3.916878
[[883]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.403234 18.948342 10.691103 3.931814 4.217363 4.634249 3.659033 4.168635 6.806114 5.897853 5.554251
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.275842 4.242885 8.485390 3.046730 4.047155 8.919188 4.230310 5.059369 5.164889 3.630557 4.107517
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.397157 3.412931 4.594103 4.868829 3.573895 4.376422 5.890369 3.488464 4.253183
[[884]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.450640 19.103115 10.281119 3.891000 4.351223 4.853446 3.448296 3.831640 7.263234 5.807904 5.363370
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.382534 4.065056 9.082153 2.890418 4.101270 9.116104 4.149394 5.145774 5.155804 3.993953 3.831670
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.387310 3.327217 4.876673 4.602393 3.476313 4.441202 5.529908 3.348127 4.443705
[[885]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.486065 18.875748 10.509229 4.069909 4.460354 4.797880 3.673655 3.753687 7.299360 5.528467 5.469075
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.229131 4.081770 8.775070 2.905371 4.021233 9.029771 4.231126 5.251192 5.341887 3.858903 3.713201
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.221669 3.258962 4.841082 4.906817 3.623010 4.505915 5.570507 3.467378 4.380632
[[886]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.466863 19.324944 9.856684 4.062953 4.787039 4.824718 3.633268 3.824414 7.226619 5.890925 5.534607
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.527435 3.899385 8.564696 3.045640 4.211109 9.116868 4.304776 4.956367 5.078672 3.686832 3.582004
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.122587 3.384776 5.095188 4.745770 3.757112 4.115304 5.698394 3.604151 4.174579
[[887]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.700454 19.437840 10.070912 3.916706 4.911813 4.876942 3.913201 3.825407 6.900454 5.999371 5.353565
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.694090 4.130466 8.872917 3.090018 4.130524 8.655220 4.331561 5.153666 5.005398 3.746376 3.486573
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.103147 3.479294 4.773378 4.658386 3.591889 4.138253 5.594932 3.445466 4.305878
[[888]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.372168 19.468724 10.097560 3.738827 4.770680 4.836666 3.954720 3.897781 7.316087 5.902454 5.232680
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.397659 3.932046 8.731949 2.879584 4.396962 8.962025 4.222383 5.475452 5.066451 3.526921 3.747785
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.094135 3.494242 4.870521 4.838332 3.431484 4.077582 5.749797 3.773248 4.068412
[[889]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.367019 19.220975 10.522271 3.930750 4.639491 5.065991 3.701434 3.876379 7.516685 5.848890 5.327805
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.366868 4.280492 8.684046 3.065060 4.130161 8.674786 4.281641 5.135270 5.104856 3.834725 3.701916
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.056717 3.493076 4.751215 5.099712 3.627393 3.955056 5.311464 3.608561 4.199341
[[890]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.283929 19.300147 10.295396 4.169767 4.981182 4.644016 3.899832 3.860386 7.342187 5.769175 5.385632
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.416054 4.003244 8.646274 3.123319 4.211764 8.913108 3.975289 5.182877 5.311540 3.776557 3.590430
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.114986 3.340572 4.817466 4.926219 3.768133 4.033588 5.506726 3.591801 4.205557
[[891]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.186913 18.947867 10.309567 3.975541 4.732273 4.822445 3.997217 4.040969 7.336070 5.980600 5.637293
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.661694 4.149953 8.780644 3.123329 4.071494 9.221871 3.929326 5.212909 4.957052 3.731050 3.628389
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.069189 3.193534 5.084121 4.701415 3.576827 4.010001 5.785677 3.305209 4.242515
[[892]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.241791 18.967710 10.346210 3.977022 4.457296 4.711590 3.884854 3.944420 6.876872 5.833896 5.339570
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.776338 4.037912 8.866226 3.053196 4.103529 9.497860 4.253902 5.036966 4.996370 3.724083 3.806265
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.181119 3.176085 4.957551 5.062869 3.472717 4.298322 5.584020 3.481683 4.307036
[[893]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.541520 19.080229 10.379294 3.987901 4.633120 4.635649 3.552300 3.769015 7.119815 5.648582 5.657100
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.598282 4.010562 8.997665 3.227080 4.197753 9.270506 4.128735 4.968371 5.250473 3.644402 3.393111
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.148256 3.256870 4.862645 5.037527 3.594661 4.410368 5.583382 3.434976 4.241110
[[894]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.144736 18.923468 10.363178 4.136022 4.777326 4.818544 3.662192 3.811566 7.362980 5.822801 5.397213
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.094703 4.097705 8.704481 3.243456 4.119236 9.367071 4.103440 5.071973 5.066365 3.865749 3.360080
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.006843 3.560102 5.226560 4.961422 3.603102 4.287754 5.469964 3.560072 4.340221
[[895]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.696663 18.734075 10.789026 4.064334 4.624548 4.649124 3.681876 4.030170 7.016075 5.899028 5.238623
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.936284 3.753721 8.806155 3.375109 4.109428 9.552992 4.305667 5.024518 5.056877 3.852761 3.554309
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.107552 3.161535 5.212048 4.692580 3.913106 3.920026 5.700459 3.506201 4.282816
[[896]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.588277 18.704935 11.037441 4.141961 4.462653 4.691360 3.701946 4.089572 6.824282 5.708053 5.275121
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.362782 3.821315 8.708430 3.210137 4.108759 9.562674 4.281592 5.041284 5.145768 3.574053 3.447328
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.231642 3.253076 5.241939 4.894858 3.772605 4.371349 5.935327 3.331658 4.128160
[[897]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.001002 18.743636 10.668070 4.290459 4.745543 4.274802 3.397869 4.094775 7.097265 6.029745 5.074501
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.472049 4.252968 8.642688 3.177498 4.093166 9.538006 4.243529 5.456431 5.152534 3.802394 3.586679
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.343183 3.243253 5.055561 4.906002 3.757501 4.164984 5.825837 3.264570 4.106083
[[898]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.167148 18.831285 10.635243 3.914795 4.581327 4.703748 3.640113 4.140127 7.336243 5.821496 5.244884
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.997183 3.976945 8.871592 3.201000 4.275562 9.816086 4.377541 5.147905 5.197128 3.564203 3.775300
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.176808 3.290035 5.079381 4.994663 3.684234 4.109391 5.658691 3.322592 4.287235
[[899]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.884946 18.696816 10.826302 4.051321 4.714439 4.320058 3.815977 4.213209 7.463967 5.845531 5.219631
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.170052 4.015392 8.824066 3.113019 4.153554 9.253819 4.297025 5.009463 5.136121 3.659403 3.457789
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.429275 3.273473 4.859867 5.056515 3.885343 4.093198 6.022745 3.618217 4.438546
[[900]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.896460 18.612281 10.758310 3.910193 4.892664 4.379912 3.709736 4.089235 7.883461 5.884755 5.064860
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.305880 4.003951 8.928799 2.931086 4.072782 9.156790 4.208678 5.298285 5.304865 3.571494 3.619218
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.485392 3.199319 5.011687 5.016999 3.983090 4.142436 5.649306 3.538670 4.339619
[[901]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.044938 18.689863 10.778337 4.084139 4.269401 4.411108 3.484345 3.977649 7.841197 5.945469 5.021514
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.004223 4.178102 9.219422 3.106774 4.165964 9.156347 4.255263 5.270278 5.309747 3.596768 3.564858
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.342987 3.245372 4.958558 5.111611 3.953551 4.315426 5.886464 3.551113 4.213143
[[902]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.202539 18.852268 10.357760 4.101844 4.047072 4.627502 3.701446 3.960620 7.469393 5.778786 5.037828
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.065959 4.130597 9.170869 3.328183 4.155208 9.130184 4.525764 5.439169 5.255104 3.789910 3.287312
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.413627 3.411841 4.648257 4.877866 4.266184 4.306094 5.971364 3.410904 4.315411
[[903]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.198328 19.015304 10.378395 3.930688 4.277651 4.919713 3.533557 4.064152 7.451249 5.944646 4.811434
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
4.898128 4.087356 9.291895 2.987957 4.276079 9.591827 4.243173 5.484550 5.263152 3.991834 3.248109
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.379819 3.301033 4.964768 5.133234 3.859264 4.205158 6.018538 3.464651 3.965535
[[904]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.987289 18.862011 10.092591 3.767248 4.475070 5.320860 3.759862 4.136421 7.654553 5.872315 4.838319
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.125159 4.243379 8.741439 3.034192 4.341094 9.346530 3.934424 5.164316 5.521430 3.749726 3.442624
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.550824 3.257437 4.728418 5.275864 3.868731 4.428913 6.131595 3.619305 4.214983
[[905]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.025642 18.972908 10.113976 4.370430 4.181408 5.121623 3.833765 3.989906 7.309527 5.804967 4.768786
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.472232 4.334675 9.199664 3.106308 3.842393 9.409579 3.993582 5.320964 5.276315 3.539859 3.637293
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.464488 3.448628 4.873316 4.808535 3.763770 4.243722 6.080318 3.818630 4.356712
[[906]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.492501 18.908322 10.705885 4.240188 4.167544 4.755813 3.989063 4.416525 7.294188 5.611487 4.962302
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.507874 4.304272 9.291011 3.141035 4.009700 9.124974 4.160588 5.413991 5.217942 3.725254 3.592553
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.209470 3.397053 4.788726 4.934859 3.926128 4.282212 6.075282 3.757174 4.530923
[[907]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.509548 18.655601 11.124902 4.114327 4.333293 4.674185 3.697955 4.054211 7.144173 5.448403 5.120173
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.619231 4.128183 9.329787 3.468579 4.197661 9.085990 4.374268 5.482900 5.092409 3.805208 3.638066
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.062891 3.385028 4.967345 4.829394 4.182010 4.195245 6.296976 3.436694 4.493201
[[908]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.856275 18.889463 10.663357 3.988122 4.638242 4.381150 3.498084 4.429585 7.268991 5.699019 5.009555
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.439457 4.225941 9.073097 2.977092 4.256496 9.277094 4.130284 5.423863 5.360420 3.741021 3.479367
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.102653 3.328632 5.043313 4.697893 4.309556 4.253855 6.109239 3.824784 4.611279
[[909]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.965927 18.239396 10.774731 3.879506 4.326380 4.184765 3.609771 4.286497 7.178112 5.606262 4.888708
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.564091 3.993915 9.599304 3.329840 4.345801 9.051363 4.187116 5.619842 5.360091 3.860406 3.653673
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.157834 3.182914 4.941705 4.749638 4.311315 4.624516 6.257782 3.725910 4.616227
[[910]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.176922 18.506271 10.730480 4.059969 4.103471 4.541300 3.591921 4.430840 7.570485 5.640986 4.810422
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.524620 4.050146 9.180069 3.131605 4.314556 8.939287 4.208140 5.918810 5.481383 3.843764 3.487733
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.035270 3.259897 4.815868 4.696575 4.122207 4.404958 6.146816 3.955929 4.706338
[[911]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.446011 18.539094 10.881281 4.164391 4.157823 4.512245 3.686023 4.398626 7.561950 5.799944 4.752416
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.741286 4.230083 9.255201 3.152774 4.106869 9.884177 4.066336 5.765206 5.420408 3.872027 3.401785
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.950976 3.177188 4.875799 4.701015 4.210279 4.544358 6.053065 3.904142 4.640223
[[912]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.196626 18.414416 10.879495 4.221304 3.990504 4.634645 3.738238 4.292243 8.060539 5.663352 4.489103
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.007233 4.293806 9.492762 2.975229 4.097324 10.106964 4.020996 5.785940 5.033122 3.686509 3.384703
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.144817 3.339991 5.072945 4.956781 4.262281 4.289246 6.279010 3.652516 4.601280
[[913]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.106356 18.757204 11.058569 4.554369 3.745560 4.481777 3.476654 4.302242 8.726579 5.751549 4.422433
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.666128 4.251354 9.896242 2.759426 4.267313 9.502781 4.004425 5.842739 5.300117 3.839419 3.335115
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.171088 3.177605 5.012065 5.089207 4.193303 4.400926 6.088872 3.755488 4.545743
[[914]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
7.926131 18.256985 11.358380 4.555805 4.127704 4.414980 3.653319 4.497152 8.355329 5.439707 4.382756
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.323380 4.294057 9.796413 2.903386 4.203345 9.897727 4.026723 6.001002 5.028294 3.752113 3.594512
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.334437 3.222309 5.145172 4.924506 4.608449 4.012787 5.779907 3.887996 4.749336
[[915]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
7.952849 18.550694 11.444389 4.525155 4.404139 4.451806 3.534161 4.119446 7.977037 5.423980 4.477708
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.747168 4.564504 9.483564 2.961497 4.094429 10.020899 4.181662 5.901696 5.110692 3.908633 3.309917
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.519219 2.796804 5.090361 5.242349 4.244991 4.178047 5.921419 3.907032 4.717802
[[916]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.356865 18.632018 11.127402 4.358756 4.081256 4.475754 3.839009 4.415686 7.950953 5.553660 4.199927
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.467361 4.669210 9.515117 2.944380 4.037535 9.927093 4.200051 6.050493 5.338269 4.069801 3.172878
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.348546 3.355402 5.003841 4.883475 4.151724 4.200749 5.784978 3.890796 4.898916
[[917]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.031273 18.312649 11.352174 4.354052 3.844857 4.643100 3.917049 4.209975 7.806725 5.403417 4.107058
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.636218 4.587025 9.910269 2.946491 4.245341 9.850882 3.826330 6.086616 5.611481 3.864972 3.380980
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.620220 3.333839 5.351039 4.904225 4.172964 4.173853 5.686146 3.958518 4.922588
[[918]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
7.940561 18.816502 11.124345 4.696796 3.876016 4.269207 3.795708 4.179430 7.626491 5.288687 4.109504
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.813421 4.433768 9.681593 2.877209 4.272117 9.770684 3.956665 6.488621 5.521608 3.905328 3.276123
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.375644 3.762452 5.433718 5.110678 4.180327 4.437179 5.740838 3.853062 4.628332
[[919]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.079974 18.558554 10.902577 4.339398 4.249150 4.543369 3.571248 4.496345 7.947038 5.535889 4.441655
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.550584 4.472573 9.633366 2.841088 3.944318 9.973233 4.088508 6.312442 5.471728 4.138933 3.352514
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.489902 3.258595 5.395114 5.406464 4.067063 4.113841 5.642446 3.601088 5.022447
[[920]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.183445 18.747448 11.212689 4.523173 4.250214 4.639333 3.710138 4.260495 8.118184 5.565859 4.224424
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.853799 4.650539 9.329138 2.726300 4.132735 9.642236 4.046961 6.411123 5.471732 3.975155 3.441542
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.361141 3.344377 5.262647 5.011611 4.135435 4.132050 5.866077 3.711441 4.935108
[[921]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.100686 19.030261 11.253091 4.552837 4.081469 4.506068 3.599710 4.324527 8.147383 5.421946 4.493695
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.791042 4.781431 9.413977 2.876156 4.108728 9.755813 4.203584 6.364423 5.603307 3.786998 3.428859
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.108181 3.363128 5.422985 5.229612 3.670954 4.170388 5.461082 3.814091 4.918935
[[922]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.472744 18.851999 11.418476 4.598638 4.080008 4.433624 3.628883 4.714081 7.822157 5.065727 4.327737
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.817849 4.529956 9.257383 3.007661 4.172957 10.069555 4.333978 6.223829 5.476218 3.618945 3.390328
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.099539 3.483430 5.326709 5.174761 3.842453 4.167042 5.755694 3.985926 5.048502
[[923]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.470677 19.229942 11.147281 4.538980 4.042544 4.757439 3.600467 4.439671 8.517022 5.186136 4.010817
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.661811 4.620703 8.820006 3.140880 4.102277 10.063677 4.276939 5.787643 5.425280 3.621483 3.397432
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.404902 3.581311 5.494156 5.331841 3.760223 4.218101 5.642151 3.926177 5.326292
[[924]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.480498 19.388370 11.192946 4.321319 3.939081 5.076401 3.419927 4.485318 8.320268 5.009819 4.717569
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.696473 4.672563 8.712026 3.026066 4.183839 9.763932 4.029242 6.170468 5.415464 3.629770 3.721594
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.938531 3.574814 5.646922 5.472824 3.975352 4.253324 5.429165 3.848507 5.317156
[[925]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.171834 19.824527 11.101083 4.338029 4.061763 4.706734 3.574663 4.743589 8.041475 5.230676 4.335641
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.715040 4.651321 8.684572 3.151180 4.036474 9.815245 3.747300 5.909133 5.572123 3.489669 3.453975
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.361032 3.420044 5.613578 5.618153 4.059927 4.476176 5.697494 4.098287 5.207418
[[926]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.343007 19.743005 11.335644 4.323781 4.026522 4.607306 3.497907 5.090739 8.138570 5.364649 3.967323
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.010487 4.570420 8.742581 2.977256 4.113499 9.941391 3.922678 5.769015 5.569733 3.555417 3.535065
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.174687 3.434126 5.669201 5.692899 3.798044 4.687707 5.500191 3.864057 5.344913
[[927]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.441555 19.822139 11.224125 4.227547 4.210409 4.594812 3.316996 5.288794 8.430356 5.646236 4.601608
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.458567 4.542224 8.839697 2.828464 4.176343 9.577915 4.264476 5.390466 5.679942 3.660215 3.347819
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.949988 3.481296 5.773698 5.656266 3.908164 4.605185 5.541429 3.567109 5.263346
[[928]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.674810 19.734518 11.497160 4.391183 4.259379 4.580290 3.344717 5.007769 8.438670 5.652815 4.458045
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.792216 4.616277 8.475755 2.909073 4.014628 9.600293 3.916878 5.585966 5.699823 3.546859 3.268891
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.907210 3.687112 5.741228 5.727825 3.868362 4.629982 5.742512 3.668472 5.126258
[[929]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.348749 19.377882 11.338305 4.324719 4.040934 4.861484 3.509629 4.861268 8.630345 5.686174 4.042729
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.933430 4.533885 8.599696 2.768415 4.067976 9.490139 3.957498 5.936482 5.985877 3.738908 3.451053
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.986991 3.479621 5.963109 6.071383 3.657652 4.730484 5.476678 3.640048 5.359841
[[930]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.344181 19.226066 11.152504 4.165258 4.151605 4.851317 3.503476 5.102655 8.727701 5.784107 4.631980
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.836236 4.418736 8.923742 2.869615 3.911941 9.763620 4.274963 5.781448 5.723345 3.663600 3.396830
NKE PFE PG TRV UNH UTX VZ WMT XOM
3.969126 3.663156 5.597338 5.981389 3.426932 4.733040 5.784011 3.688698 5.157318
[[931]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.968025 19.394171 11.166145 4.362283 4.240142 4.885817 3.484796 5.110886 7.905419 5.461738 4.299430
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.923344 4.442805 9.035019 2.898490 4.085104 9.605160 4.159328 5.923791 5.709634 3.676485 3.147785
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.243932 3.669044 5.894673 5.566885 4.007268 4.595634 5.602988 3.801772 5.232341
[[932]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.590798 19.069359 11.325491 4.319968 4.159244 5.039302 3.233433 4.764804 7.894852 5.538279 4.584851
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.953980 4.294495 8.603483 3.051749 4.186537 9.980000 4.163664 6.242780 5.494111 3.656750 3.556342
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.296441 3.283318 5.938218 5.759487 3.651726 4.589751 5.595601 3.744599 5.086174
[[933]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.667878 19.197614 11.656312 4.184530 3.916039 4.566251 3.394991 5.127827 8.092270 5.141273 4.451422
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.955894 4.538760 8.465534 3.165887 3.923546 9.882536 4.248286 6.112464 5.810909 3.600237 3.491829
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.343396 3.426014 6.238923 5.601784 3.648582 4.746006 5.383745 3.554216 5.151272
[[934]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.700820 19.221528 11.465354 4.425375 4.009912 4.865971 3.372181 5.277399 8.201272 5.093220 4.387446
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.568475 4.769822 8.869513 3.023284 3.994555 9.621356 4.374188 5.979005 6.044181 3.766416 3.387287
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.352714 3.469971 6.113921 5.426908 3.614943 5.037409 5.536278 3.641220 5.210928
[[935]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.439696 19.014541 11.367720 4.233541 4.077769 4.969564 3.228872 5.064934 7.984916 5.249748 4.489257
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.749441 4.605869 8.443772 2.847784 3.978708 9.852057 4.602632 6.360528 5.927782 3.510838 3.381465
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.241871 3.647134 5.903134 5.545547 3.473630 5.126960 5.706246 3.782467 5.382822
[[936]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.129782 19.310323 11.596346 4.132764 4.021536 4.939705 3.309666 5.047764 8.257698 5.056147 4.386652
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
5.722199 4.666792 8.685295 2.875265 3.997530 10.006522 4.330540 6.218138 5.967088 3.583421 3.322070
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.384234 3.630295 6.084649 5.579889 3.700262 5.035883 5.338578 3.956819 5.346783
[[937]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.037865 19.512317 11.801340 4.130426 3.901434 4.786054 3.439119 4.953860 8.348458 5.257483 4.121021
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.019575 4.504098 8.398548 3.114341 3.970988 10.448303 4.649110 6.244299 6.026049 3.530679 3.113848
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.458791 3.605630 5.980143 5.549635 3.804329 4.796322 5.403035 3.828503 5.157472
[[938]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.177897 19.497980 11.958503 4.410620 4.244586 4.977088 3.425307 4.377022 8.395907 5.171997 4.378040
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.037008 4.688230 8.592309 2.883688 3.800047 10.067712 4.228860 6.490530 5.994471 3.694194 3.278897
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.054387 3.653650 5.873270 5.402297 3.770875 5.005278 5.660892 3.998356 5.306072
[[939]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.444569 19.421483 11.908736 4.337264 4.444498 4.803160 3.320722 4.403273 8.533970 5.159159 4.540318
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.337099 4.633415 8.742374 2.922047 4.026116 9.855346 4.471536 6.063786 5.942074 3.823869 3.067261
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.255061 3.485839 5.825559 5.458568 3.898936 4.625172 5.705018 4.123551 4.984649
[[940]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
8.998660 19.508641 11.393135 4.547789 4.301842 4.874053 3.388513 4.702492 8.258810 4.987540 4.777688
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.386049 4.483441 9.180751 2.840374 3.897830 9.847348 4.340151 6.619082 5.876795 3.699222 3.171934
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.054630 3.473696 5.857301 6.338400 3.806409 4.888426 5.607866 4.205711 4.643395
[[941]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.142163 19.540010 11.860480 4.473574 4.188049 4.944079 3.217219 4.441165 8.210400 5.071216 4.265765
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.902933 4.380998 9.236193 2.871537 4.028438 9.955556 4.545103 6.393013 5.918065 3.519322 3.205648
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.299695 3.392430 6.248593 5.589304 3.872104 4.662568 5.600465 4.207936 5.122341
[[942]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.800096 19.262725 12.061885 4.433751 3.936141 4.820367 3.529557 4.826238 8.281475 5.052092 4.261157
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.218975 4.728498 9.179860 2.804250 4.014515 10.028240 4.264297 6.172708 5.820226 3.694403 3.062506
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.613373 3.461988 6.015739 5.562450 3.930795 4.566791 5.972240 3.722512 5.571154
[[943]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.640855 19.573986 11.707175 4.504577 4.025407 4.862136 3.636622 5.027027 8.426170 4.971094 4.372937
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.162557 4.587864 9.412009 2.801911 3.915089 10.178585 4.384952 6.603112 5.854237 3.728621 3.094769
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.235726 3.312146 5.984790 5.816774 3.670605 4.567544 6.104185 3.481234 5.264542
[[944]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.821163 19.899169 11.812776 4.742452 3.991035 4.995197 3.685767 4.849094 8.256161 4.999512 4.224173
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.313823 4.599306 9.419009 2.677943 3.710780 10.171819 4.064958 6.194614 5.847534 3.798634 3.273754
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.615765 3.439566 5.882783 5.385488 3.998392 4.647907 5.606922 3.825781 5.503758
[[945]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.776420 19.575459 11.850561 4.648651 4.476486 4.861819 3.622598 4.772636 8.773104 4.894446 4.301674
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.469313 4.432275 9.010482 2.731959 4.044261 9.866751 4.099211 6.556156 5.879357 3.678026 3.043454
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.782741 3.424819 5.923711 5.090748 3.956435 4.889074 6.208081 3.938629 5.242713
[[946]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.717428 19.847436 11.984337 4.898576 4.070158 4.733841 3.708606 4.756930 8.306877 4.982438 4.282646
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.641901 4.165408 9.210291 2.841852 3.987774 9.713249 4.532474 6.222400 5.681148 3.974984 3.111766
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.691713 3.554239 5.905756 5.707904 3.731361 4.861880 6.128366 3.659443 5.329244
[[947]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.457019 19.705599 11.541673 5.208027 4.089040 4.707749 3.576058 4.873447 8.573238 5.330931 4.472195
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.856564 4.309751 9.310123 2.839948 4.050080 9.974970 4.075687 6.334326 5.801817 3.895246 3.145637
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.690006 3.535059 5.999157 5.485810 3.914442 4.866265 5.757326 3.606443 5.291741
[[948]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.462696 19.670601 11.485617 5.218537 4.010910 4.837838 3.600285 5.161950 8.876232 5.063791 4.460307
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.637573 4.093213 9.474860 2.824721 3.973925 9.822163 4.217905 6.506156 5.988737 3.939330 3.205928
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.644837 3.225145 6.163570 5.706528 3.955834 4.900276 5.973577 3.719530 5.270402
[[949]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.396107 19.919723 11.461327 5.737025 3.826370 4.856495 3.483200 5.010090 9.011290 5.214992 4.593129
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.002719 4.230939 8.640159 2.889003 4.204428 9.591759 4.334866 6.129351 5.953631 3.965147 2.958833
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.210909 3.387343 6.636513 5.613717 3.987547 4.825541 6.251537 3.771374 5.202225
[[950]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.459415 19.852833 11.575984 5.400265 3.748013 4.587526 3.294229 5.349358 8.842988 4.914426 4.504896
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.396013 4.240648 9.017943 2.977921 4.200270 9.722440 4.558389 6.217743 5.945966 3.670045 3.067579
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.341615 3.554422 6.385039 5.502898 4.127217 4.917170 5.992061 4.000856 5.250146
[[951]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.521570 19.878415 11.669206 5.420073 4.120534 4.473576 3.225435 5.021162 9.245345 5.116813 4.244319
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.362031 4.215118 9.254389 2.958839 4.309527 10.086686 4.366814 6.041056 5.539282 4.144267 3.234123
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.323820 3.645095 6.282529 5.837726 4.203769 4.694438 5.905750 3.730105 5.321301
[[952]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.509761 19.752550 11.962611 4.906046 4.193465 4.434630 3.510399 5.189208 9.205134 5.156719 4.032446
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.389757 4.452805 9.235044 3.180921 4.338266 10.397699 4.676349 6.130117 5.728561 3.932957 3.115852
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.280794 3.693597 6.200258 5.653425 3.816066 4.815257 6.097928 3.781814 5.446718
[[953]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.161951 20.085096 12.106734 4.788664 4.079938 4.869970 3.365768 5.224988 9.044214 4.861609 4.102834
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.339778 4.399980 9.428491 3.184624 4.253799 11.316950 4.251412 6.500912 5.725575 4.067105 3.190755
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.334201 3.687485 6.315027 5.558725 3.697906 4.737250 5.788708 3.796680 5.559153
[[954]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.550566 20.220223 12.175653 4.967310 3.967693 4.521981 3.542149 5.218091 8.625982 5.019862 4.487553
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.334704 4.192143 9.286774 3.319220 4.469509 11.143526 4.214567 6.534715 5.663745 3.867053 3.257960
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.531252 3.324144 6.498021 5.587074 3.988570 4.725544 5.828385 3.824758 5.582302
[[955]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.355972 20.972063 12.291051 5.102604 3.938763 4.672673 3.548668 5.590598 9.052872 4.961826 4.264648
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
6.856199 4.281393 9.476226 2.899232 4.413518 11.157748 4.407885 6.510130 5.898714 4.256549 3.148801
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.295555 3.409066 6.212310 5.482156 4.011742 4.840754 5.760608 3.638808 5.249834
[[956]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.187354 21.075901 12.058741 4.967489 3.650036 4.668859 3.699683 5.645679 8.931078 4.835015 4.312770
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.505258 4.081571 9.642853 3.284856 4.462891 11.229954 4.450186 6.204551 5.852687 4.122162 3.201366
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.904865 3.395532 6.428215 5.063656 3.963766 4.932188 5.776198 3.670830 5.357432
[[957]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.566328 20.769906 11.930443 4.941031 3.756716 4.648758 3.449434 5.725791 9.163011 4.780324 4.014628
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.347799 4.311142 9.953638 3.159675 4.609109 11.464756 4.388211 6.354561 5.745229 4.012809 3.231284
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.806550 3.625902 6.409577 5.469788 3.965532 4.743297 5.837078 3.720455 5.475027
[[958]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.220253 20.702076 11.537128 4.951932 3.662198 4.451822 3.463324 5.778213 8.661143 5.262775 5.055908
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.843856 4.432076 10.131464 2.930388 4.568377 11.085995 4.023006 6.505371 5.777718 4.136440 3.358684
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.999579 3.215619 6.589130 5.132671 3.732907 4.722500 6.374853 3.951992 5.351172
[[959]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.217479 21.124931 12.372432 5.112809 3.666716 4.694201 3.607084 6.656678 8.817609 5.011151 4.807872
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.554255 4.431872 10.153911 2.954589 4.174415 11.058277 3.770459 6.414837 5.860674 3.934668 3.399491
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.677247 3.405415 6.928702 5.244201 3.886790 4.748435 5.776919 3.825383 5.525586
[[960]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.544129 20.454994 12.366857 5.290499 3.775116 3.927985 3.461180 6.137902 9.318455 5.010019 4.988223
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.770692 4.493110 9.814971 3.149879 4.230692 11.693886 3.812281 6.543461 6.090746 4.191267 3.250586
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.758147 3.674016 6.806467 5.057922 3.721258 5.050022 5.583116 3.987901 5.746895
[[961]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.419208 20.611046 12.331576 6.082892 3.545412 4.419477 3.381491 6.191991 8.505249 5.302835 5.154350
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.038622 4.228475 9.614866 3.027452 4.105072 11.722915 4.243954 6.523965 5.868779 4.208729 3.209526
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.826672 3.395450 6.570405 5.373103 3.778543 5.082135 5.999047 3.912796 5.758312
[[962]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.997879 20.565461 12.126524 5.684944 3.560930 4.305416 3.618197 6.400616 8.808615 5.018988 5.338093
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.629182 4.244895 9.555605 3.148180 3.959860 11.861379 4.157104 6.450770 6.148604 4.665528 3.245780
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.688009 3.277249 6.541250 5.627587 3.794310 5.065218 6.000153 3.893955 5.651980
[[963]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.848364 20.754668 12.040731 6.032103 3.419267 4.299770 3.436058 6.140224 8.614160 5.094730 5.602221
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.960716 4.466609 10.151974 2.858291 4.209530 11.633280 4.065192 6.422504 6.004321 4.147909 3.678912
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.708183 3.204133 6.886908 5.435357 3.734333 5.367066 5.821800 3.580728 5.907754
[[964]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.194358 20.788107 12.123196 6.277600 3.713691 4.283753 3.469986 6.125579 8.744032 4.996073 5.550218
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
7.917705 4.114637 10.385652 3.109525 4.192085 11.820674 4.138307 6.444189 5.927156 3.764014 3.583064
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.600121 3.406852 6.772976 5.670008 3.727177 5.181325 5.515512 3.737357 5.961211
[[965]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.226215 20.120850 12.019609 6.306130 3.884073 4.549706 3.328261 5.926233 8.464889 5.204281 5.615124
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.534094 4.071616 10.019221 3.186020 4.271534 11.872583 4.525797 6.582302 5.986909 3.822698 3.367645
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.367023 3.239232 6.877230 5.914529 3.800550 5.067132 5.674499 3.779715 6.280386
[[966]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.338309 19.902521 12.089860 5.975075 3.626544 4.435498 3.514832 5.908502 9.254166 5.237022 5.462564
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.584965 4.391336 9.810844 3.019323 4.255510 12.291298 4.114799 6.532024 5.976694 3.853788 3.361169
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.693690 3.560833 6.742479 5.764108 3.931016 5.043409 5.761925 3.792630 6.492092
[[967]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
9.979024 20.185153 11.995973 5.887187 4.047045 4.614366 3.544673 5.911562 9.289995 5.425987 5.719073
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
8.943143 4.237034 10.025642 3.161898 4.228729 12.130902 4.430157 6.388221 5.556148 4.297019 3.376290
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.363960 3.316475 6.625272 6.028168 3.821616 4.846943 5.767341 4.051612 6.243938
[[968]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.505546 20.048766 12.246659 5.956002 3.942158 4.816251 3.477382 6.114475 8.903322 5.431724 5.330268
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.255736 4.553749 10.118968 3.066806 4.061680 11.884662 4.349118 6.614262 5.874541 4.253814 3.202733
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.359190 3.321323 6.526735 5.719409 3.637022 4.984011 6.502788 3.771112 6.331726
[[969]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.333717 19.827707 12.389425 5.566778 4.102609 4.947625 3.538126 6.208144 9.000311 5.170069 5.135034
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.374931 5.169832 9.730664 2.947169 4.026810 11.439816 4.562997 6.570526 5.930555 4.544327 3.279471
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.448277 3.371096 6.434160 5.981255 3.765159 4.976140 6.091122 4.071385 6.589649
[[970]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.676658 20.253737 12.493294 6.211702 3.889582 5.005507 3.559591 6.210776 9.012685 4.912841 4.787797
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.328700 4.367933 9.880854 2.889752 4.066511 11.594114 4.347294 6.177835 5.947873 4.154041 3.306612
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.452951 3.560278 6.656712 6.034672 3.797204 5.217283 6.606939 3.823565 6.739939
[[971]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.028197 20.620692 12.707320 6.261799 3.705755 4.890878 3.386113 6.318119 8.896951 4.885095 4.925101
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.511867 4.417407 10.194536 2.746894 4.319457 11.836739 4.580296 6.377041 6.079633 4.208434 3.204169
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.463433 3.528209 6.723543 6.093588 3.879891 5.024597 6.209942 3.776152 6.670391
[[972]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.767007 20.354169 12.519754 6.194650 3.875404 4.662504 3.830164 6.641225 8.796778 5.023695 4.415774
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.706382 4.783255 9.974259 2.941696 4.195809 11.647367 4.585015 6.451291 6.035538 4.047359 2.970366
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.397214 3.355878 6.704066 6.270009 3.911978 4.953777 6.326366 3.944927 6.761217
[[973]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.767400 20.622308 12.603482 5.786699 3.763475 4.678697 3.540952 6.787168 9.119531 5.069857 5.042443
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.917428 4.451349 10.170813 2.957698 3.997132 11.794587 4.572065 6.256218 6.067222 4.037348 3.145273
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.115956 3.447867 5.969127 6.927731 4.207247 4.976290 6.007627 4.130514 6.826979
[[974]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.964496 20.873904 12.623512 6.108356 4.017209 4.652679 3.562084 6.754179 8.959973 5.050874 5.076106
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.620629 4.738828 10.101814 2.996025 4.179684 11.753488 4.311808 6.544416 6.165246 4.088612 3.075604
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.444662 3.435688 6.827887 6.273217 3.684844 4.641400 5.955767 4.123966 6.833763
[[975]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.870213 21.005588 13.014599 6.124781 3.951716 4.777032 3.509336 5.963357 9.115608 5.016613 5.222514
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.403913 4.465774 10.152291 3.077703 4.103626 12.726256 4.420741 6.331045 6.461271 3.921079 2.939384
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.261411 3.353676 6.114795 7.184948 3.634840 4.916237 6.225450 3.878521 6.972030
[[976]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.536483 21.312962 13.235371 6.269347 3.816497 4.680938 3.722073 5.741175 9.002817 5.185417 5.543375
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.640517 4.263820 10.140209 3.097413 4.254697 12.370535 4.515969 6.280442 6.353401 3.873741 2.659882
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.340115 3.531202 6.172651 7.139081 4.010745 5.037883 6.207837 3.759265 7.013331
[[977]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
10.845386 21.129106 13.102650 6.075067 3.867722 4.650418 3.518828 5.826862 9.577151 5.347265 5.392223
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.363309 4.431872 10.018443 3.253245 4.323044 12.580250 4.392038 6.153680 6.534872 4.076438 2.843834
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.294259 3.600585 6.216464 7.069833 3.912379 4.547629 6.425251 3.600285 6.945665
[[978]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.621839 20.676974 13.149273 5.822400 3.988535 4.814163 3.575517 5.701658 9.245615 5.345648 6.063441
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.586585 4.509137 9.487605 3.104913 4.252982 12.668772 4.284562 6.253817 6.119508 4.051250 2.844592
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.393158 3.440471 6.324252 7.278630 4.130204 4.623234 6.593956 3.761877 7.100548
[[979]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.802263 21.122365 12.899978 6.104140 3.679187 4.624014 3.695001 5.599980 9.076964 5.051890 6.142251
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.768523 4.530026 9.533394 2.794108 4.188935 13.168446 4.198992 6.257795 6.399835 4.186972 3.046999
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.374174 3.336679 6.116217 7.367566 3.963402 4.624641 7.033014 3.762711 6.924645
[[980]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.902976 21.555826 13.013260 6.178728 4.016863 4.614889 3.475318 6.039293 8.909704 5.354754 6.015269
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.195464 4.424191 9.400762 2.838991 4.138645 12.820466 4.302379 6.363935 6.327216 4.008669 3.132456
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.469913 3.418888 6.211819 7.467124 4.114285 4.802531 6.721990 3.908373 6.960915
[[981]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.859292 21.439651 13.042784 6.527712 3.681565 4.776538 3.636564 5.964719 9.230942 5.003317 5.841551
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.493250 4.388342 9.898518 2.873843 4.111110 12.746166 4.167761 6.341201 6.485449 4.103470 3.246766
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.119941 3.508058 6.189846 7.377048 4.017673 4.561558 6.644619 4.053057 7.199420
[[982]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.871612 21.865761 13.475243 7.149504 3.698131 4.851441 3.785764 5.968931 8.572429 5.008526 5.748763
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.380125 4.310617 10.249099 3.013249 3.895797 12.657912 4.127027 6.300681 6.318591 4.058603 3.221267
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.276455 3.643503 6.433191 6.920979 3.689929 5.081476 6.622195 3.933277 7.064835
[[983]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.860204 21.897309 13.248795 7.087928 3.819169 4.591371 4.045263 6.023148 8.134051 5.071879 5.916941
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.363777 4.458888 9.860613 3.032022 3.806283 12.691586 4.054787 6.528905 6.477282 3.977334 3.369500
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.664097 3.609377 6.390489 7.096702 3.756060 4.931655 6.833148 3.756895 7.253253
[[984]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.173391 21.511405 13.532449 6.871827 3.977322 4.778604 3.775169 6.299130 8.306601 4.784860 6.126467
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.503505 4.468889 9.913734 3.008586 4.053414 12.959639 4.085773 6.586431 6.363061 3.954892 3.281666
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.526139 3.838699 6.540714 6.768437 3.806946 4.912643 6.444125 3.973122 7.159416
[[985]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.935157 21.663085 13.457004 7.072446 3.878381 5.096955 3.806624 6.159532 8.795519 4.789312 5.933606
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.466460 4.679438 10.368894 3.050503 4.204910 13.074104 3.945699 6.317860 6.508444 3.988796 3.213744
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.279227 3.530910 6.228384 6.944304 3.976003 4.562479 6.650657 4.153259 7.137686
[[986]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.867158 22.213142 13.478264 7.147516 4.089631 5.076805 3.723172 6.393450 8.439790 4.907146 5.997140
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.464162 4.413624 10.311206 3.023207 3.974871 13.122322 4.086391 6.448314 6.766958 4.210832 3.133800
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.160221 3.467435 6.303819 6.972909 3.944986 4.647032 6.281734 3.964219 7.379096
[[987]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.876465 22.343582 13.522567 7.216849 4.111993 4.723264 3.565844 6.425727 7.944108 4.877845 5.672088
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.723087 4.362194 10.372820 2.935330 4.077779 13.604860 4.038493 6.635201 6.529730 4.306677 3.225607
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.214947 3.548449 6.278473 6.891909 4.089930 4.824390 6.238073 3.875075 7.485921
[[988]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
11.979472 22.422784 13.620688 6.953032 4.324751 4.753633 3.632811 6.463858 8.037661 4.883700 5.547582
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.860045 4.443174 10.380089 2.838164 4.097563 13.326129 4.055851 6.509779 6.096557 4.171071 3.430428
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.264734 3.517772 6.811856 7.335528 4.022923 4.831983 6.329941 3.761032 7.283048
[[989]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.489400 22.247632 13.548793 6.880577 4.232405 4.814982 3.428648 6.351481 8.029953 4.816209 5.416258
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.927978 4.674213 10.614777 2.980012 3.936784 13.339402 4.224088 6.402184 6.241990 4.190881 3.212023
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.592339 3.554315 6.734927 6.809950 4.250703 5.024511 6.530180 4.001883 7.168742
[[990]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.183392 22.400174 13.290901 6.868343 4.293923 4.964369 3.472838 6.397802 8.029608 5.151170 5.448813
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
9.841438 4.549372 10.296442 3.186442 3.950446 13.429668 4.121403 6.485590 6.374550 4.036603 3.416040
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.413486 3.507921 6.638568 7.287914 3.863648 5.136813 6.622439 4.114125 7.277485
[[991]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.632439 22.350755 13.531069 6.886422 4.090752 5.374536 3.652302 6.458051 8.459635 4.680309 4.569589
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.029304 4.320388 11.344802 3.172463 4.065308 13.346582 3.944518 6.341251 6.604614 4.391451 3.406215
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.035952 3.458785 6.467659 6.144321 4.025739 4.974559 6.385480 3.985781 7.456192
[[992]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.199789 22.457461 13.808859 6.273388 4.266948 5.146489 4.005623 6.207756 8.887530 4.719816 4.848288
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.266290 4.391051 11.200259 3.243183 4.001957 13.674038 4.211607 6.439469 6.430803 4.098685 3.515829
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.766789 3.545463 6.747079 6.315023 3.889804 4.710447 6.034190 4.471922 7.362483
[[993]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.248073 22.366804 13.604797 6.084623 3.994323 5.557586 3.756899 6.328922 8.852281 4.869895 4.896626
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.209946 4.586239 11.561758 3.218158 3.936055 13.366983 3.967923 6.697223 6.844442 4.213068 3.487380
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.813358 3.454307 6.810729 6.398409 3.804860 4.837783 6.386378 4.228899 7.302465
[[994]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.536144 22.292124 13.530392 5.813021 4.076341 5.113717 3.874579 6.159330 8.814399 4.824169 4.991748
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.722223 4.429339 11.377054 3.495228 4.245995 13.167010 3.898522 6.437089 6.747958 4.353622 3.421555
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.666530 3.502312 7.151524 6.416253 3.684187 4.958198 7.058492 4.108569 7.441605
[[995]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.456986 22.141759 13.635286 5.886070 4.231585 5.286404 3.664483 6.113297 8.813758 5.015617 4.844433
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
10.706564 4.452877 11.640486 3.545117 3.929425 12.917625 4.117263 6.715287 6.449082 4.085967 3.243863
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.697500 3.008583 7.486076 6.349590 3.714694 5.032157 7.391161 4.270097 7.578339
[[996]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.513610 22.097455 13.988064 5.736370 4.193960 5.261337 3.482505 6.180637 8.458976 5.063989 4.712687
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.121845 4.574942 11.635252 3.441584 4.070255 12.893642 3.988056 6.422662 6.669646 4.069232 3.443410
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.717148 3.086349 7.403450 6.390259 3.853359 5.042486 7.612993 4.100377 7.554590
[[997]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.409209 21.979990 13.571559 6.209441 4.325470 5.117336 3.636640 6.387465 8.528732 5.356305 5.581142
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.375939 4.493764 11.399299 3.607574 4.084799 12.926840 4.043521 6.328595 6.154070 4.107149 3.383080
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.042759 3.463819 7.222994 6.272699 3.861344 4.819323 7.528643 3.976827 7.716423
[[998]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.464079 22.227698 13.653672 6.122173 4.093727 5.233010 3.694677 6.541964 8.623964 5.093717 4.941047
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.329954 4.423306 11.527376 3.297342 4.166226 13.210400 4.137465 6.501076 6.197438 4.226186 3.339930
NKE PFE PG TRV UNH UTX VZ WMT XOM
5.181699 3.307628 7.509418 6.538213 3.804511 4.729982 7.052232 3.599088 7.627217
[[999]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.564033 22.177375 13.741969 6.136026 4.403220 5.331100 3.588492 6.121781 8.708095 4.614893 4.676741
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.027417 4.846894 11.490750 3.270946 4.233366 13.392013 4.323980 6.520610 6.603141 4.471474 3.603409
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.972182 3.213024 7.223903 6.323234 3.909535 4.883692 7.205324 3.723358 7.638235
[[1000]]
month_RV week_RV previous_RV AXP BA CAT CSCO CVX DD DIS GE
12.401902 22.189261 13.842047 6.061522 4.042282 5.111667 3.565390 6.134434 8.666075 4.680621 5.287124
GS HD IBM INTC JNJ JPM KO MCD MMM MRK MSFT
11.396625 4.934146 11.457603 3.311381 4.499049 13.363688 4.184172 6.704383 6.679242 4.284739 3.601743
NKE PFE PG TRV UNH UTX VZ WMT XOM
4.712897 3.461745 7.127470 6.400399 3.761158 4.932937 7.420428 3.646318 7.515435
[ reached getOption("max.print") -- omitted 2287 entries ]